wildman jessica l 201005 ms
TRANSCRIPT
THE EFFECTS OF ETHNIC DIVERSITY, PERCEIVED SIMILARITY, AND TRUST ON
COLLABORATIVE BEHAVIOR AND PERFORMANCE
by
JESSICA L. WILDMAN
B.S., University of Central Florida, 2007
A thesis submitted in partial fulfillment of the requirements
for the degree of Master of Science
in the Department of Psychology
in the College of Sciences
at the University of Central Florida
Orlando, Florida
Spring Term
2010
Major Professor: Eduardo Salas
ii
© 2010 Jessica L. Wildman
iii
ABSTRACT
Recent issues such as global economic crises, terrorism, and conservation efforts are making
international collaboration a critical topic. While cultural diversity often brings with it new
perspectives and innovative solutions, diversity in collaborative settings can also lead to
misunderstandings and interaction problems. Therefore, there is a pressing need to understand
the processes and influences of intercultural collaboration and how to manage the collaborative
process to result in the most effective outcomes possible. In order to address this need, the
current study examines the effect of ethnic diversity, perceived deep-level similarity, trust, and
distrust on collaborative behavior and performance in decision-making dyads. Participants were
assigned to either same-ethnicity or different-ethnicity dyads and worked together on a political
simulation game in which they had to make complex decisions to solve societal problems and
increase their popularity. The results of this study indicate that ethnically similar dyads reported
higher levels of perceived deep-level similarity than ethnically dissimilar dyads, and that this
perceived deep-level similarity served as the mediating mechanism between objective
differences in ethnic diversity and trust and distrust, respectively. The findings also suggest that
trust and distrust attitudes, when considered together as a multiple mediation model, mediate the
positive relationship between perceived deep-level similarity and collaborative behavior. Finally,
results show that collaborative behavior significantly predicts objective performance on the
political decision-making simulation. The implications of this study for theory and practice are
discussed along with the study limitations and several suggestions for future research.
iv
This work is dedicated to my mother, Sharon Gail Wildman, who taught me to cherish
learning and never stop trying to improve as a person. I know she would be very proud to see me
complete this work and continue to persevere in my ongoing path toward knowledge.
v
ACKNOWLEDGMENTS
The process of completing this thesis has been one of the most challenging, yet
rewarding, processes of my graduate career to date and I have many people to thank for that.
First, I would like to thank my advisor, mentor, and committee chair, Dr. Eduardo Salas, for
allowing me to single-handedly develop and manage an entire laboratory-based research project
on my own despite the fact that it was the first time in my life I have managed anything research
related. Overcoming the inevitable frustrations and challenges has taught me so many valuable
lessons. Second, I would like to thank Dr. Barbara Fritzsche for encouraging me to write a thesis
in the first place. At many points I felt like giving up, but looking back, it was the worthwhile
experience she promised it would be. Third, I would like to thank Dr. Shawn Burke for listening
to me as I changed my thesis topic over and over for a year before finally settling on the very
first idea I had come up with.
I would also like to thank my amazing colleagues and friends for listening to me talk
about my work constantly and for helping me to get this experiment up and running: Wendy
Bedwell, Marissa Shuffler, Elizabeth Sanz, Carollaine Hall, Sallie Weaver, Davin Pavlas,
Maritza Salazar, Julia Fullick, and the many others that have played a role in this endeavor. I‟d
especially like to thank Miliani Jimenez for enduring the thesis process with me for the past two
years and for forcing me to stay on track.
Finally, I thank my father, Doug Wildman, my stepmother, Jamie Wildman, my
grandmother, Wydetta Graham, and my sister, Jennifer Wildman, for always being so proud of
my every accomplishment. I also thank my partner and best friend, Steven Pontones, for
inspiring me to reach for more knowledge and to question every assumption, pushing me to be a
better scientist each and every day.
vi
TABLE OF CONTENTS
LIST OF FIGURES ..................................................................................................................... viii LIST OF TABLES ......................................................................................................................... ix
CHAPTER ONE: INTRODUCTION ............................................................................................. 1 Statement of the Problem ............................................................................................................ 1 Purpose of the Current Study ...................................................................................................... 2
CHAPTER TWO: LITERATURE REVIEW ................................................................................. 4 Theories of Diversity .................................................................................................................. 4
Impression Formation Theory ................................................................................................ 5 Relational Demography .......................................................................................................... 5 Similarity-Attraction Paradigm .............................................................................................. 6 Social Identity Theory and Social Categorization .................................................................. 7
Trust ............................................................................................................................................ 8 Trust as an Emergent Attitudinal State ................................................................................. 10
Trust versus Distrust ............................................................................................................. 11 Propensity to Trust ................................................................................................................ 14
Collaboration............................................................................................................................. 14 CHAPTER THREE: HYPOTHESIZED RELATIONSHIPS ...................................................... 17
Objective Ethnic Similarity....................................................................................................... 19
Hypothesis 1 .......................................................................................................................... 19 Propensity to Trust .................................................................................................................... 19
Hypothesis 2. ......................................................................................................................... 20 Hypothesis 3a ........................................................................................................................ 21 Hypothesis 3b ........................................................................................................................ 21
Perceived Similarity and Trust.................................................................................................. 21
Hypothesis 4a ........................................................................................................................ 22 Hypothesis 4b ........................................................................................................................ 22 Hypothesis 5a ........................................................................................................................ 23
Hypothesis 5b ........................................................................................................................ 23 Trust and Collaborative Behavior ............................................................................................. 23
Hypothesis 6a ........................................................................................................................ 24 Hypothesis 6b ........................................................................................................................ 24
Hypothesis 6c ........................................................................................................................ 24 Perceived Similarity and Collaborative Behavior..................................................................... 24
Hypothesis 7a ........................................................................................................................ 25 Hypothesis 7b ........................................................................................................................ 25
Collaborative Behavior and Decision-Making Performance .................................................... 25
Hypothesis 8 .......................................................................................................................... 26 CHAPTER FOUR: METHODS ................................................................................................... 27
Participants ................................................................................................................................ 27 Design and Procedure ............................................................................................................... 27 Measures ................................................................................................................................... 29
CHAPTER FIVE: RESULTS ....................................................................................................... 33 Data Analysis ............................................................................................................................ 33 Hypothesis Results .................................................................................................................... 34
vii
CHAPTER SIX: DISCUSSION ................................................................................................... 59
Theoretical Implications ........................................................................................................... 63 Practical Implications................................................................................................................ 64 Study Limitations and Future Research .................................................................................... 65
Conclusion ................................................................................................................................ 68 APPENDIX A: DEMOGRAPHIC ITEMS .................................................................................. 70 APPENDIX B: PRIOR VIDEO GAME SCALE ......................................................................... 74 APPENDIX C: PROPENSITY TO TRUST SCALE ................................................................... 76 APPENDIX D: SOCIAL DOMINANCE ORIENTATION SCALE ........................................... 78
APPENDIX E: MULTIGROUP ACCULTURATION SCALE .................................................. 80 APPENDIX F: COLLECTIVE ORIENTATION SCALE .......................................................... 82 APPENDIX G: BASIC EMPATHY SCALE .............................................................................. 84 APPENDIX H: FAMILIARITY SCALE .................................................................................... 86
APPENDIX I: ETHNIC EXPERIENCE SCALE........................................................................ 88 APPENDIX J: PERCEIVED DEEP-LEVEL SIMILARITY SCALE ........................................ 90
APPENDIX K: PERCEIVED DEEP-LEVEL SIMILARITY SCALE ....................................... 92 APPENDIX L: COLLABORATIVE BEHAVIOR SCALE ....................................................... 94
APPENDIX M: UCF IRB HUMAN SUBJECTS PERMISSION LETTER ................................ 97 REFERENCES ............................................................................................................................. 99
viii
LIST OF FIGURES
Figure 1. Hypothesized Relationships between Study Variables ................................................. 18 Figure 2. Mediation Model for Direct and Indirect Effects of Objective Ethnic Similarity on
Trust .............................................................................................................................................. 48 Figure 3. Mediation Model for Direct and Indirect Effects of Objective Ethnic Similarity on
Distrust .......................................................................................................................................... 51 Figure 4. Multiple Mediation Model for Direct and Indirect Effects of Perceived Deep-Level
Similarity on Collaboration........................................................................................................... 56
ix
LIST OF TABLES
Table 1. Summary of Intercorrelations, Means, and Standard Deviations for Study Variables ... 36
Table 2. Regression of Perceived Similarity on Propensity to Trust, Ethnic Diversity, and their
Interaction ..................................................................................................................................... 38 Table 3. Regression Analyses Predicting Trust from Propensity to Trust .................................... 40 Table 4. Hierarchical Regression Analyses Predicting Distrust from Social Dominance and
Propensity to Trust ........................................................................................................................ 41
Table 5. Regression Analyses Predicting Trust from Perceived Deep-Level Similarity .............. 43 Table 6. Hierarchical Regression Analyses Predicting Distrust From Social Dominance and
Perceived Deep-Level Similarity .................................................................................................. 44 Table 7. Indirect Effect of Objective Ethnic Similarity on Trust through Perceived Deep-Level
Similarity....................................................................................................................................... 47 Table 8. Indirect Effect of Objective Ethnic Similarity on Distrust through Perceived Deep-Level
Similarity....................................................................................................................................... 50 Table 9. Hierarchical Regression Analyses Predicting Collaboration from Trust and Distrust ... 53
Table 10. Mediation of the Effect of Perceived Deep-Level Similarity on Collaboration through
Trust and Distrust .......................................................................................................................... 55 Table 11. Hierarchical Regression Analyses Predicting Performance from Familiarity and
Collaboration................................................................................................................................. 58
1
CHAPTER ONE: INTRODUCTION
Statement of the Problem
The nature of organizational work is changing at an incredible pace. In an era of rapid
globalization and advancement of technology, many organizations, civilian and government
alike, are turning toward collaborative work arrangements in order to gain an advantage and
remain competitive. Rapidly developing technology has broken down geographic boundaries,
making multinational corporations and overseas employment the wave of the future in both
industry and government. More organizations are expanding to overseas markets and various
collaborative structures such as strategic alliances, mergers, and acquisitions have become
commonplace among industry. Military and political endeavors are becoming increasingly more
collaborative as the world comes together to address global issues such as global economic
crises, terrorism, and conservation. Simultaneously, the global workforce is becoming
increasingly diverse in terms of ethnicity and gender as the world becomes a global melting pot.
These issues, and more, are making intercultural collaboration an increasingly important
performance phenomenon to understand.
Research has suggested that trust between involved parties is critical to the success of
interdependent operations such as collaboration (Kramer, 1999; Mayer, Davis, & Schoorman,
1995; Salas, Sims, & Burke, 2005). The criticality of trust in international collaborative efforts
has even been emphasized in the global news. For example, U.S. Defense Secretary Robert
Gates, when discussing relations between the U.S. and Pakistani military, stated that a “trust
deficit… had hampered cooperation against militancy” (“Gate Strives to Build Trust,” 2010).
The impact of trust has been widely studied across a variety of team settings (e.g., virtual teams,
Aubert & Kelsey, 2003; social care teams, Costa, 2003; student project teams, Kanawattanachi &
2
Yoo, 2002). However, very little research has focused on the development of trust in one
particular setting: diverse, short-term, ad hoc teams.
Often in both industry and government, multicultural collaborative efforts come together
and disband quickly, or occur in response to a very short-term problem. Emergency response
teams and task forces are two examples of critically important collaborative groups that both
come together quickly and enact their tasks quickly. Commonly in these situations, the
interacting parties have no prior knowledge of each other and very little time for building trust
before they must engage in their primary task. This is problematic given the majority of the trust
literature posits that individuals make trust decisions based on the perceived benevolence,
integrity, and ability of others (Mayer et al., 1995). In these quickly-paced short term
collaborative settings, however, individuals do not have enough time or information to judge
these deep-level characteristics before having to make a decision to trust. In this situation,
individuals are likely to rely more heavily on category-based judgment, and use outwardly
observable traits to form trust attitudes (Fiske & Neuberg, 1990). Recent theoretical
developments have suggested that the formation of trust occurs differently in these short-term
team contexts (e.g., Hung, Dennis, & Robert, 2004; Wildman et al., under review). However, to
date, there is relative lack of empirical studies examining the formation of trust in short-term
multicultural teams. Therefore, the primary purpose of this study is to provide a deeper
understanding regarding how trust attitudes are formed by individuals in short-term, diverse,
collaborative contexts, and how this trust influences subsequent collaboration and performance.
Purpose of the Current Study
Based on the previously described societal issues, there is an immediate need to start
examining the influence of culture and diversity on trust and collaboration so that both
3
researchers and practitioners can effectively manage the growing number of intercultural
collaborations happening across a variety of fields in today‟s world. In order to address this need,
the current study begins the journey toward an understanding of intercultural collaboration;
specifically focusing on collaboration in short-term temporary settings. The laboratory
experiment examines the influence of ethnic diversity, which is considered one outwardly salient
indicator of culture, on trust and distrust attitudes between collaborating partners, and how these
attitudes subsequently influence collaborative process and outcomes.
This study will uniquely contribute to the trust and collaboration literature in several
ways. First, it will be the first empirical study to examine collaboration based on a new multi-
disciplinary, integrative definition developed by Bedwell, Wildman, DiazGranados, Salazar,
Kramer, and Salas (under review). Second, it will be the first study laboratory-based experiment
to examine the unique predictive impact of trust and distrust as separate attitudinal constructs in
a collaborative context. Third, it will experimentally investigate the influence of ethnic diversity
on trust and the effectiveness of collaboration, paving the way toward a better understanding of
the mechanisms and influences of culture on collaborative interactions. The hope is that this
empirical investigation will serve as a basis for further research examining the exact mechanisms
through which culture influences trust and the effectiveness of collaboration.
4
CHAPTER TWO: LITERATURE REVIEW
The current study draws upon several established areas of literature. The relationships
regarding ethnicity are informed by the various theories of diversity including impression
formation theory, relational demography, similarity-attraction paradigm, and social
categorization theory. The relationships regarding trust are informed by well-known theories of
interpersonal trust development. Finally, collaboration is defined based on the multidisciplinary
definition put forth by Bedwell and colleagues (under review). In the following sections, each of
the supporting theories and areas of literature included in the current study are described in
further detail.
Theories of Diversity
As mentioned previously, in quickly-paced short term settings, individuals are likely to
use outwardly observable traits to form trust attitudes (Fiske & Neuberg, 1990). Therefore, rather
than focus on deep-level differences in culture that could influence collaboration, focus in this
study is kept on the theories of diversity that can inform these category-based judgments. Several
different theories help to explain how surface-level diversity impacts the interactions between
individuals, especially collaborative interactions. Impression formation theory explains how
individuals form perceptions and attitudes when first meeting another individual. Relational
demography theory focuses on the perception of demographic differences between individuals.
Similarity-attraction paradigm is a broader theory which proposes that individuals are attracted to
others similar to themselves. Finally, social identity theory and social categorization are theories
that explain the cognitive mechanisms individuals use to place themselves and others into
categories, and how these categorizations influence the ways individuals behave toward and
react to others.
5
Impression Formation Theory
Social psychology suggests that individuals use both data from the environment and pre-
conceived expectancies to form impression of others (Fiske, 1993). Specifically, the continuum
model of impression formation posits that individuals make category-based impressions when
they have little individuating information available (Fiske & Neuberg, 1990). The dual process
model of impression formation also suggests that individuals form impressions towards others by
combining the available information about a person with prior knowledge that is in their long-
term memory (Brewer, 1988). In the current study, the collaborating individuals will be strangers
with no knowledge of one another, and are therefore likely to engage in this form of impression
formation that relies heavily on category-based information and prior knowledge associated with
those categories. Research has suggested that cognitive schema, or this prior knowledge,
influences the impression formation process by causing a confirmation bias (Rosenhan, 1973;
Snyder & Swann, 1978) to occur. In other words, in this study, because the trustor has a
preconceived notion regarding the trustworthiness of different categories of people (e.g., race,
gender, age), he or she will be more likely to search for and interpret information from the
environment that confirms, or does not go against, his or her preconceived notions. Social
psychology has been studying the process of impression formation for some time, and research
has shown that attitudes such as trust can be formed towards others without people even being
cognizant of the formation of these attitudes (McCulloch, Ferguson, Kawada, & Bargh, 2008).
Relational Demography
Impression formation theory describes what information individuals use when forming
impressions of others. The literature on relational demography theory focuses on similarity
between an individual and another, suggesting that “an individual‟s similarity or dissimilarity in
6
demographic characteristics to others in a social unit affects that individual‟s attitudes and
behaviors” (Riordan & Wayne, 2008, p. 562). Simply stated, impression formation theory states
that individuals perceive surface-level demographic characteristics of others around them such as
in terms of ethnicity, gender, or age. In turn, relational demography states that these perceptions
are compared to the self to determine whether the self and the other are similar or dissimilar, and
this in turn influences attitudes and behaviors. Relational demography is especially salient to the
current research content because when swiftly-forming collaborative groups come together,
demographic cues are often the only information available on which the interacting parties can
base their initial cognitions and attitudes. In particular, due to the highly visual nature of
ethnicity, this is one of the most salient demographic characteristics that can influence an
individual‟s behavior and attitudes. This, along with prior research that identifies ethnicity as one
aspect of culture (e.g., Chao & Moon, 2005; Gelfand, Erez, & Aycan, 2007) and the tenets of
impression formation theory, justifies the decision to focus on ethnicity as a relevant cultural
variable. Previous research has shown that demographic similarity between two individuals is
related to higher levels of interpersonal comfort (Allen, Day, & Lentz, 2005), liking (Ensher &
Murphy, 1997; Lankau, Riordan, & Thomas, 2005), and group performance (Riordan &
Weatherly, 1999), suggesting that it will indeed play a critical role in the collaborative process.
Similarity-Attraction Paradigm
Similarity-attraction paradigm (Byrne, 1971) proposes that individuals are attracted to
others like themselves. In other words, birds of a feather flock together – similar people will be
attracted to each other because they recognize similarities between themselves and the other, and
therefore are more likely to get along with and work well with others like themselves. Theorists
have suggested that similarity in demographic traits often leads to an assumption about similarity
7
in values, beliefs, and attitudes (Tsui, Porter, & Egan, 2002; Tsui, Xin, & Egan, 1995) and
having this assumed knowledge about the other‟s values leads to a sense of predictability and
comfort. Research has consistently found that perceived similarity increased liking between
supervisors and their subordinates (e.g., Tsui & O‟Reilly, 1989; Wayne & Liden, 1995). In sum,
similarity-attraction paradigm further supports the idea that ethnically similar individuals will be
more likely to have more positive interactions and more effective collaborations than ethnically
dissimilar individuals. Further, similarity-attraction paradigm suggests that it is an individual‟s
perception of their similarity to others that serves as the mechanism by which actual similarity
influences attitudes and collaborative outcomes.
Social Identity Theory and Social Categorization
Despite the salience of ethnicity as a surface-level demographic variable, being similar in
terms of ethnicity does not guarantee that the individuals will perceive themselves as similar, or
vice versa. In order for an individual to reach this sense of predictability and comfort, they must
first perceive the similarity or dissimilarity between themselves and the other person. Social
identity theory helps to explain this phenomenon by proposing that individuals have an
awareness of themselves as belonging to groups that share a common identity (Tsui et al., 2002).
The basic tenants of social categorization theory are that people are motivated to maintain a high
level of self-esteem and that in order to maintain high self-esteem people must distinguish
themselves from others. This process of social comparison leads people to classify others as
either in-group members (i.e. similar to the person) or out-group members (i.e. dissimilar). To
maintain positive self-esteem, people ascribe positive characteristics to their in-group and ascribe
negative characteristics to out-group members.
8
In other words, this theory explains how people categorize themselves and others into
groups based on similarity and dissimilarity on factors such as demographics, and how those
groups are associated with a set of predetermined assumptions and a sense of predictability. In
order for the individuals to reach this sense of predictability and comfort, they must first perceive
the demographic similarity between themselves and the other person. Because ethnicity is one of
the few outwardly salient demographic variables, I believe it will be associated with perceived
similarity. I especially believe this relationship will exist due to the short-term nature of our
project. Because the individuals will have no prior work experience with each other, the only
cues on which to base judgments of similarity will be the most outwardly salient cues, making
ethnicity a highly influential input into an individual‟s sense of perceived similarity with another.
Research has found that in-group status is associated with evaluations of trustworthiness,
honesty, and cooperativeness (Brewer, 1979). Since individuals are more likely to assume that
their partner has similar values and beliefs to themselves if they perceive themselves to be
similar, perceived similarity is proposed to result in an increased sense of interpersonal comfort
and trust. Simply stated, individuals are likely to trust others perceived to be similar to
themselves (Brewer, 1979; Brewer & Kramer, 1985; Kramer & Brewer, 1984). In the same
logic, individuals will be less likely to distrust others perceived to be similar to themselves.
Conversely, if individuals perceive others to be different, they are less likely to trust and more
likely to distrust them (Kramer, 1994; Kramer & Messick, 1998).
Trust
Trust has been one of the most widely studied constructs in organizational research, and
consequently, multiple models have been developed and tested over the years. The most widely
accepted models focus on delineating the antecedents that lead to the development of trust (e.g.,
9
Mayer et al., 1995), while other models focus on specific aspects of trust such as rebuilding trust
(Mesquita, 2007) or the role of emotion management in the development of trust (Williams,
2007). The conceptualizations of trust can generally be grouped into three perspectives: trust as a
stable trait, trust as a process, and trust as an emergent state (Burke, Sims, Lazzara, & Salas,
2007). Trust as a stable trait focuses on a concept known as propensity to trust. This can be
described as the baseline level of trust that an individual is willing to extend to all others with
whom they interact (Rotter, 1954; 1967). As a stable trait, trust is expected to remain at the same
level for a given individual across a variety of settings and situations. This particular construct
will be discussed in detail in a later section.
Trust has also been conceptualized as a process that unfolds over time. This perspective
of trust suggests that trust is a process through which other behaviors, attitudes, and relationships
are bolstered or weakened (Burke et al., 2007). In other words, trust is seen as a moderating
variable. This is a unique view of trust because it implies that trust changes over time, but it also
implies that trust is a process that individuals engage in, rather than an attitude or feeling, which
tends to run counter to the average individual‟s conceptualization of trust.
Finally, trust has also been viewed as an emergent attitudinal state. Meaning, trust is an
attitude held by an individual that develops and changes over time based on various contextual
factors (Burke et al., 2007). Conceptualizing trust as an emergent state suggests that trust can be
developed, or even disrupted or broken, by specific events and situations. This conceptualization
of trust is the most congruent with a majority of the models and definitions of trust in the
literature, and is also the most congruent to the intuitive experience of trust. Therefore, for the
purposes of this study, trust will be conceptualized as an emergent attitudinal state that is
influenced by initial inputs such as an individual‟s ethnicity and propensity to trust.
10
Trust as an Emergent Attitudinal State
The definitions of trust found within models of trust that generally conceptualize trust as
an emergent state can be roughly grouped into three perspectives. In the first perspective, the key
concept within trust is vulnerability. Mayer and colleagues (1995) define trust as the “willingness
of a party to be vulnerable to the actions of another party based on the expectation that the other
will perform a particular action important to the trustor, irrespective of the ability to monitor or
control that party” (p. 712). This definition of trust is by the far the most widely cited and
accepted definition, and has served as the foundation for several other models of trust (e.g.,
Aubert & Kelsey, 2003; Brower, Schoorman, & Tan, 2007; Serva, Fuller, & Mayer, 2005;
Williams, 2001). This particular stream of research approaches trust as a willingness to be
vulnerable to others. Accordingly, trust is only the willingness to be vulnerable, but not the
actual act of taking of placing oneself in a vulnerable position. Known as risk-taking behaviors,
the action of making oneself vulnerable is an outcome of trust, rather than trust itself. The Mayer
and colleagues (1995) model of trust also strongly asserts that trust and distrust are not distinct
constructs, but are opposite ends of the same continuum. Therefore, distrust represents the lack
of or absence of trust.
In the second perspective, trust is conceptualized as the expectancy of positive outcomes
based on the expected actions of another party in an interaction based on uncertainty
(Bhattacharya, Devinney, & Pillutla, 1998). This perspective is very similar to the first, but
frames the attitude in a more positive way by describing it as expectations or confidence toward
the trustee instead of a willingness to be vulnerable. Both perspectives suggest that trust leads to
risk-taking behaviors, but each approaches it in a different way. Other similar definitions of trust
include “confident positive expectations regarding another‟s conduct” (Lewicki, McAllister, &
11
Bies, 1998) and “the confidence an individual has in a partner‟s willingness to be responsive to a
person‟s needs, even when they conflict with the partner‟s own preferences” (Rempel, Ross, &
Holmes, 2001, p. 58). This perspective also generally considers trust and distrust to be opposite
ends of one continuum.
Finally, other models of trust have conceptualized trust as a combination of the previous
two perspectives, specifically, as a “psychological state comprising the intention to accept
vulnerability based upon… expectations of the intentions or behavior of another” (Rousseau,
Sitkin, Burt, & Camerer, 1998, p. 395). This definition includes both the concepts of
vulnerability and positive expectations, combining both positively- and negatively-valenced
terms in one definition. Due to the integrated nature of this definition, it has also been widely
cited (e.g., Burke et al., 2007; Lau & Liden, 2008; Weber, Malhotra, & Murnighan, 2001). The
common factor across all of these definitions is the assumption that trust and distrust are not
distinct constructs, but are opposite ends of one continuum. Restated, trust is the presence of a
positive attitude, while distrust is simply the absence of trust. One particular stream of trust
literature has directly opposed this view, and suggested that trust and distrust are unique and
separate constructs and can coexist simultaneously. This argument will be described in detail in
the following section.
Trust versus Distrust
As previously mentioned, one of the most accepted and cited definitions of trust is “the
willingness of a party to be vulnerable to the actions of another party based on the expectation
that the other will performance a particular action important to the trustor, irrespective of the
ability to monitor or control that other party” (Mayer et al., 1995, p. 712). This definition focuses
on the concept of vulnerability, which implies that there is a risk being taken when working with
12
others. Based on this widely accepted model, trust and distrust are conceptualized as opposite
ends of the same continuum. Given that trust is defined as the willingness to take a risk, distrust
then means that an individual would be unwilling to take any risks. This model implies that a
complete lack of trust is the same as distrust. These authors recently revisited their original
model and discussed the movement toward a two-factor model of trust, and concluded that they
felt there was not enough credible evidence to support the idea that trust and distrust are
conceptually different (Schoorman, Mayer, & Davis, 2007).
Lewicki and colleagues (1998) conversely argue that trust and distrust are separate
dimensions, and can exist simultaneously within a relationship. They define trust as “confident
positive expectations regarding another‟s conduct” and distrust as “confident negative
expectations regarding another‟s conduct” (p. 439). Based on these definitions, the absence of
trust (i.e., the lack of confident positive expectations) is not synonymous with distrust, and
therefore they cannot be opposite ends of the same continuum. Their main argument for
conceptualizing trust and distrust separately is because both constructs exist, and therefore can be
studied, in any relationship simultaneously. This model is based on the concept of
multidimensionality, and is designed to acknowledge the fact that, psychologically, positive and
negative emotions are not the same as ambivalence. In other words, feeling strong distrust
towards another individual is not the same as feeling no trust (i.e., ambivalence) towards them.
Support for the separation of positive-valent and negative-valent attitudes can be found in
several other research arenas. For example, the positive and negative affectivity research has
repeatedly found that while positive and negative affectivity are highly correlated, both
constructs uniquely contribute to prediction of various outcome variables (Thoresen, Kaplan,
Barsky, Warren, & Chermont, 2003). Similarly, research has supported the conceptual
13
distinction between optimism and pessimism as highly related, yet separate, traits (Stallings,
Dunham, Gatz, & Bengtson, 1997). This theoretical perspective suggests that trust research may
gain from studying trust and distrust as separate, yet related, constructs in order to truly
understand the antecedents, processes, and outcomes related to each construct.
The Lewicki and colleagues (1998) definition of trust and distrust also deviates from the
Mayer and colleagues (1995) model of trust in that it defines trust as positive or negative
expectations rather than a willingness to take risks. This perspective rests on the assumption that
interpersonal relationships are multifaceted and complex, and that people relate to each other in
different ways. In other words, it is misleading to say that trust is whether or not a person is
willing to take risks, because that question depends on what the risks are regarding. A trustor
could have both confident positive and negative expectations regarding different aspects of
another‟s conduct, and thus be willing to take a risk in one context but not in another. For
example, a parent may trust a teenage babysitter to watch their children for a few hours, but may
distrust them to file their taxes simultaneously.
To the best of my knowledge, there has been no research directly examining the potential
distinctions between trust and distrust as distinct attitudinal emergent states in a collaborative
context. However, the theory behind the conceptualization of trust and distrust as separate and
distinct constructs is compelling and consistent with other streams of literature. Thus, one of the
primary goals of the current research is to empirically examine the distinction between trust and
distrust and whether or not these constructs are differentially predictive of collaborative
outcomes. Accordingly, I conceptualize trust and distrust as two separate attitudinal variables
that are correlated, but not opposite ends of the same continuum.
14
Propensity to Trust
Propensity to trust is an individual difference variable that describes the baseline level of
trust an individual is willing to extend to those with whom they interact (Burke et al., 2007).
Trust propensity was a significant predictor of trust even when ability, benevolence, and integrity
were controlled for (Colquitt, Scott, & LePine, 2007). Across 10 studies and 1514 participants,
propensity to trust was found to correlate .27 with trust. Mayer and colleagues (1995) theorize
that propensity to trust would influence how much trust a person has for a person prior to data on
that particular party being available, and that cultures differ on their propensity to trust. They
specifically propose that the higher a trustor‟s propensity to trust, the higher the trust for a trustee
prior to availability of information about the trustee. This supports the idea that propensity to
trust will have a significant influence on trust in collaborations between individuals with no prior
knowledge of each other. Given the short-term, immediate action nature of the dyads in this
study, it is expected that propensity to trust will play a critical role in determining subsequent
trust and distrust levels since participants will have almost no prior knowledge on which to base
their trust for a trustee. However, I also suggest that propensity to trust will not be the only
predictor of trust attitudes and that surface-level differences in ethnicity will also influence trust
attitudes.
Collaboration
The literature examining collaborative work efforts is vast, and spans multiple
disciplines. Management, education, medical, military, and even anthropology researchers have
all delved into some form of collaboration research. Several theories and models of collaboration
have even been developed in various disciplines. While this vast amount of research looking at
collaboration seems promising for the scientific community, there is one fatal flaw crossing all
15
arenas: the lack of a unified, comprehensive definition of collaboration. A huge portion of the
literature examining collaboration, empirical and theoretical alike, completely fails to define the
term (e.g., Leinonen, Jarvela, & Hakkinen, 2005; Kelly, Schaan, & Joncas, 2002; McLaughlin &
Pointe, 1997) while another sizable portion uses some version of a vague dictionary definition
such as “jointly working with others.” This lack of a clear definition leaves the reader to guess as
to how collaboration is distinct from any and all other interactions involving more than one
entity such as teamwork, cooperation, and even competition.
While the term collaboration is intuitively understood by most, this is not sufficient for
research purposes. If collaboration research is to prove meaningful, it is critical that the
phenomenon of interest is clearly defined. Otherwise, the meaning of collaboration in one study
could be drastically different from the meaning of collaboration in another, making seemingly
complementary results unrelated. Henneman, Lee, and Cohen (1995) state:
The lack of clarity has resulted in the term 'collaboration' being used in a variety of
inappropriate ways in both research and practice settings. For example, it is often
considered synonymous with other modes of interaction such as cooperation or
compromise. Unfortunately, confusion over the meaning of collaboration has hindered its
usefulness as a variable in studies which attempt to evaluate its effectiveness." p 104
Therefore, the current research is based on a recently developed integrative,
multidisciplinary definition of collaboration (Bedwell, Wildman, DiazGranados, Salazar,
Kramer, & Salas, under review). Bedwell and colleagues (under review) define collaboration as
an evolving macro process whereby two or more entities reciprocally engage in problem-solving
activities to achieve mutually desired goals. This definition provides a concrete understanding of
collaboration as a behavioral process while still remaining broad enough to explain a variety of
16
interpersonal work situations to which this research can be generalized. In this particular study,
collaboration is represented as the joint decision-making of a short-term student dyad. This
collaborative situation could be considered to be very similar to the phenomenon of teamwork,
since a team can be defined as “two or more individuals with specified roles interacting
adaptively, interdependently, and dynamically toward a common and valued goal” (Salas et al.,
2005, p. 562) and within the present task the two individuals must work together adaptively and
dynamically toward a shared goal. However, unlike a formally defined team, in this more
broadly defined collaborative situation, the two individuals do not have pre-specified roles and
do not necessarily have to work interdependently. Instead, they have the choice to work
interdependently. It is important to note that regardless of whether or not the study dyads are
conceptualized as teams, the process of reciprocal problem-solving is, by definition,
collaboration. Therefore, the current study is aimed at examining the extent to ethnic diversity,
perceived deep-level similarity, and trust relate to how much the participants engage in
reciprocal problem-solving to achieve mutually desired goals.
17
CHAPTER THREE: HYPOTHESIZED RELATIONSHIPS
In the current study, the relationships between objective ethnic similarity, perceived
deep-level similarity, trust, distrust, propensity to trust, collaboration, and performance on a
complex decision-making task are examined. Figure 1 presents a summary of the hypothesized
relationships. As mentioned previously, ethnicity is considered to be one outwardly salient
component of individual culture, and therefore, ethnic similarity is the cultural variable
manipulated in this model. Ethnicity is suggested to influence trust and distrust by impacting an
individual‟s perceptions of deep-level similarity, as suggested by impression formation,
relational demography, similarity-attraction paradigm, and social identity theories. The model
also examines the influence of propensity to trust, an individual difference variable, on trust and
distrust and the relationship between actual and perceived similarity. Trust and distrust,
operationalized as negatively related yet distinct attitudinal constructs based on the theory of
Lewicki and colleagues (1998), influence the process of collaboration and overall performance
separately, and therefore corresponding sub-hypotheses are made for trust and distrust
throughout. Rather than restating this rationale repeatedly, it is assumed from this point onward.
Each of the hypothesized relationships is described in further detail in the following sections.
18
Figure 1. Hypothesized Relationships between Study Variables
19
Objective Ethnic Similarity
As has been suggested by Hung and colleagues (2004), when an individual does not have
the cognitive resources or motivation necessary to seek information with which to form trust
attitudes, they will rely on peripheral cues instead. Peripheral cues include any and all cues that
are outwardly salient at the immediate beginning of a team‟s development (Milliken & Martins,
1996). In general, the only cues that will be immediately salient between individuals first
meeting one another in the given study are observable traits such as race, ethnicity, age, or
gender. As mentioned in the literature review, similarity in demographic traits between
individuals leads to an assumption about similarity in values, beliefs, and attitudes (Tsui et al.,
2002) and having this belief about the other‟s values leads to a sense of predictability and
comfort. In short-term temporary collaborations with no prior history, ethnicity will be one of the
most salient differences that individuals will use when making assessments regarding others.
Therefore, a positive relationship between ethnic similarity and perceived deep-level similarity is
expected. Specifically, because ethnic composition of the dyads will be manipulated into cross-
ethnicity and same-ethnicity conditions, the following directional finding is hypothesized:
Hypothesis 1: Cross-ethnicity dyads will report lower levels of perceived deep-level
similarity than same-ethnicity dyads.
Propensity to Trust
Individuals differ in their general propensity to trust others. In essence, perceived
similarity can be conceptualized as a factor of perceived trustworthiness in that individuals
perceived to be more similar to oneself will also be perceived as more trustworthy (Brewer,
1979). I further suggest that individuals, when forming trust and distrust attitudes, will be
influenced by confirmation bias (Oswald & Grosjean, 2004) when receiving and interpreting
20
peripheral cues such as ethnicity. Specifically, individuals with a low propensity to trust will be
predisposed toward feelings of low trust toward a trustee, and therefore will be more receptive to
peripheral cues that confirm that lack of trust. In other words, they will be actively looking for
cues that distinguish the trustee from themselves, and will be more likely to interpret differences
in demographic traits into perceptions of dissimilarity. Since individuals with a low propensity to
trust are naturally more suspicious of others, they will be more likely to look for traits that will
confirm their suspicions. Conversely, individuals with a high propensity to trust, who are
naturally more trusting and accepting of others, will be more likely to overlook peripheral cues
such as ethnic differences that suggest an individual is different from themselves and to ignore
demographic differences when making a judgment regarding perceived similarity. Thus, I
hypothesize:
Hypothesis 2: Propensity to trust will moderate the relationship between objective ethnic
diversity and perceived deep-level similarity, such that when propensity to trust is low,
the relationship between objective ethnic diversity and perceived deep-level similarity
will be stronger than when propensity to trust is high.
It is also expected that propensity to trust will have a direct relationship with trust and
distrust attitudes, along with the just described moderating relationship. Gill, Boies, Finegan, and
McNally (2005) found that propensity to trust correlated with an individual‟s intention to trust
when the trustworthiness of the other person was ambiguous. This finding supports the idea that
propensity to trust will have a significant direct influence on trust in collaborations between
individuals with no prior knowledge of each other, as this situation would result in ambiguous
levels of perceived trustworthiness during the initial meeting stage. Given the short-term,
immediate nature of the task in the current study, it is expected that propensity to trust will play a
21
critical role in determining subsequent trust levels since participants will have almost no prior
knowledge on which to base their trust for a trustee. Additionally, because I conceptualize trust
and distrust as conceptually separate yet negatively related concepts, I expect that propensity to
trust will be positively related to trust and negatively related to distrust.
Furthermore, according to the attitude theory of positive and negative activation (e.g.,
Thoresen et al., 2003; Watson, Wiese, Vaidya, & Tellegen, 1999), attitude constructs differ in
terms of their valence or hedonic tone. Some attitudes, such as job satisfaction or happiness, are
considered positively valenced while others, such as paranoia or stress, are considered negatively
valenced. These various attitudes will activate completely different physiological and emotional
systems in individuals depending on whether they are positively or negatively toned.
Additionally, this theory contends that constructs that match in affectivity should be more closely
related than constructs that are affectively mismatched. Trust and propensity to trust could be
considered to be positively valenced attitudes while distrust represents a negatively valenced
attitude. Therefore, I hypothesize:
Hypothesis 3a: Propensity to trust will be positively related to trust in short-term ad hoc
collaboration.
Hypothesis 3b: Propensity to trust will be negatively related to distrust in short-term ad
hoc collaboration.
Hypothesis 3c: Propensity to trust will be more strongly related to trust than to distrust in
short-term ad hoc collaboration.
Perceived Similarity and Trust
Social identity and social categorization theories suggest that if individuals perceive
others as similar to themselves, this similarity is associated with a set of predetermined
22
assumptions and a sense of predictability and comfort. Research has consistently found that
perceived similarity increased liking between supervisors and their subordinates (e.g., Tsui &
O‟Reilly, 1989; Wayne & Liden, 1995). Intuitively, liking is a very similar concept attitudinally
to trust. Therefore, perceived similarity is expected to positively influence trust and negatively
influence distrust between collaborating partners. Trust is conceptualized as a positive affective
state that would be highly related to interpersonal comfort and predictability. Individuals will be
more likely to assume that their partner has similar values and beliefs to themselves if they
perceive themselves to be racially similar, and this perceived similarity in terms of values leads
to an increased sense of interpersonal comfort and trust. Simply stated, individuals are more
likely to trust others perceived to be similar to themselves (Brewer, 1979; Brewer & Kramer,
1985; Kramer & Brewer, 1984). In the same logic, individuals will be less likely to distrust
others perceived to be similar to themselves. Also, following the positive and negative activation
logic delineated in the previous hypothesis, we expect that perceived similarity, as a positively
valenced attitudinal construct will be more strongly related to other positively valenced
constructs. In other words, I hypothesize that:
Hypothesis 4a: Perceived similarity will be positively related to trust in short-term ad
hoc collaboration.
Hypothesis 4b: Perceived similarity will be negatively related to distrust in short-term ad
hoc collaboration.
Hypothesis 4c: Perceived similarity will be more strongly related to trust than to distrust
in short-term ad hoc collaboration.
According to the Hung and colleagues (2004) theory of trust development, when a trustor
has very little opportunity to gather information regarding a trustee, the trustor will rely heavily
23
on peripheral cues (e.g., ethnicity) when making the decision to trust. This is due to the fact that
the trustor has no other cues or information on which to base the decision to trust. Relational
demography extends this concept by proposing that similarity in peripheral cues will lead to an
assumption about deep-level similarities. In this study, objective ethnic similarity should have a
significant impact on the formation of trust attitudes. I further posit that perceived deep-level
similarity is the mechanism through which peripheral cues such as gender, ethnicity, and age
influence trust. This assumption is based on the various theories of diversity such as relational
demography, similarity-attraction paradigm, and social categorization theory. Restated, similarity
in terms of ethnicity will impact trust by influencing the perceptions of deep-level similarity held
by the involved parties. Therefore, I hypothesize the following:
Hypothesis 5a: Perceived deep-level similarity will mediate the relationship between
objective race diversity and trust.
Hypothesis 5b: Perceived deep-level similarity will mediate the relationship between
actual race diversity and distrust.
Trust and Collaborative Behavior
Across a variety of research, trust generally has been empirically related to desirable
performance outcomes such as knowledge sharing, citizenship behaviors, and task performance
(Colquitt et al., 2007; Dirks & Ferrin, 2002). I posit that trust is especially critical to
collaborative efforts because the nature of collaboration rests so heavily on interaction and
knowledge sharing between the collaborating parties. Research has demonstrated that trust
increases people‟s willingness to engage in cooperative and sociable behaviors with others
(Kramer, 1999). More specifically, trust “lubricates” the collaborative processes by making the
interpersonal interaction more positive and sociable. In other words, if there is a high trust
24
between the collaborating parties, they will engage in more open and reciprocal behavior with
them. Since I defined collaboration as reciprocal problem-solving aimed toward a mutual goal,
this suggests that dyads with high levels of trust will engage in more collaborative behavior.
Conversely, if there is low trust within the dyad, each party may attempt to solve the problem
more individually and in a less collaborative, reciprocal manner. Therefore, I hypothesize:
Hypothesis 6a: Trust will be positively related to collaborative behavior.
Hypothesis 6b: Distrust will be negatively related to collaborative behavior.
One of the purposes of this empirical investigation is to examine the predictive ability of
distrust as a separate construct above and beyond trust. Following the reasoning set out by
Lewicki and colleagues (1998), I expect that since distrust is conceptually distinct from trust, and
theoretically could exist simultaneously to trust, that it will be a unique predictor of
collaboration. In other words, distrust is a negatively-valenced attitude, whereas trust is a
positively-valenced attitude.
Hypothesis 6c: Distrust will predict unique variance in collaborative behavior beyond
trust.
Perceived Similarity and Collaborative Behavior
I have already described how similarity-attraction paradigm, relational demography, and
social categorization theories support the notion that individuals will trust others that are similar
to themselves. In other words, the rationale linking perceived similarity and trust is already
established. I also posit that perceived similarity will be positively related to collaborative
behavior, and that trust will be the mediating mechanism in this relationship. Social psychology
research on in-group and out-group favoritism has indeed shown that individuals will act more
altruistically toward members of their in-group than toward members of an out-group, even when
25
the categorization seems arbitrary (Tajfel, 1970; 1982). In essence, people considered similar to
oneself would be considered as part of the in-group based on the perception of shared values and
beliefs, whereas people considered dissimilar to oneself would be categorized as out-group
members. This suggests that perceived deep-level similarity should be positively related to
collaborative behavior. I further suggest that trust is the mediating psychological mechanism that
causes perceived similarity to be related to collaborative behavior, based on the expected
relationship between trust and collaboration. In other words, individuals will act more
collaboratively toward one another if they perceive themselves as similar because this similarity
leads them to trust one another, which then leads them to behave more collaboratively.
Furthermore, the theory of reasoned action (Ajzen & Fishbein, 1980) supports the idea that a
person‟s behavioral intentions, and behavior, will depend on a person‟s attitudes.
Hypothesis 7a: Trust will mediate the relationship between perceived similarity and
collaborative behavior.
Hypothesis 7b: Distrust will mediate the relationship between perceived similarity and
collaborative behavior.
Collaborative Behavior and Decision-Making Performance
Finally, I posit that collaborative behavior will be positively related to overall
performance on the decision-making task. Dyads engaging in collaborative behavior are more
likely to share information with one another and to consider each other‟s suggestions while
performing the task. More specifically, the decision-making task in the current study requires the
collaborating parties to jointly make and implement decisions over time using a variety of
guiding information. Increased collaboration behavior (i.e., communication, coordination) should
result in more accurate decision-making with the dyad. Research examining processes that can
26
be considered to represent collaboration in teams has found that process positively predicts team
performance across a variety of contexts (LePine, Piccolo, Jackson, Mathieu, & Saul, 2008)
supporting the notion that collaborative behavior will be positively related to performance.
Hypothesis 8: Collaborative behavior will be positively related to overall performance.
27
CHAPTER FOUR: METHODS
Participants
Participants were 122 male and 92 female undergraduate students enrolled in psychology
classes at the University of Central Florida. Their ages ranged from 18 to 37 (M = 19.01; SD =
2.133). In regards to ethnicity, 169 of the participants self-identified as Caucasian, 6 as Black, 7
as Asian, 1 as Pacific Islander, 13 as Hispanic, 7 as “other”, and 11 did not respond to the self-
identified ethnicity question in our pre-study survey. The participants were randomly assigned to
work in a same-ethnicity or different-ethnicity dyad based on the ethnicity identified in their pre-
screen responses in the online research recruiting system, resulting in a final sample size of 107
dyads. Of these dyads, 58 were same-ethnicity and 49 were different-ethnicity. Same-ethnicity
dyads consisted of two self-identified Caucasian participants, while different-ethnicity dyads
consisted of one Caucasian participant and one non-Caucasian participant (i.e., Hispanic,
American Indian, Black, Pacific Islander, etc). All dyads were matched on gender. There were
no significant effects of gender on the relationships reported here however, so all dyads were
pooled into a single sample.
Design and Procedure
Participants were recruited using the university web-based research system and were
compensated with extra credit points as approved by the university. Participants first filled out a
demographics survey along with the propensity to trust questionnaire and several other
individual difference measures in a separate, online survey. After completing this survey,
participants were given the opportunity to sign up for the laboratory-based portion of the
experiment. Individuals signed up for timeslots which were already assigned into one of two
conditions based on race: same-ethnicity or cross-ethnicity dyads. Because of the limited
28
diversity within our sample and the nature of the compositional manipulation, Caucasian
participants were equally likely to sign up for a same-ethnicity or a different-ethnicity condition,
but all non-Caucasian participants were included in the different-ethnicity conditions. The in-
person experimental sessions generally took just under two hours to complete. The task used in
the study was the computer-based political strategy simulation known as Democracy 2.
Upon arrival, participants walked through a short text-based training module explaining
the basic game play elements of Democracy 2. After completing training, the dyads worked
together on a short practice round that served to familiarize them with the game and each other.
Participants then filled out a survey before beginning a full game of Democracy 2, which was
limited to a total of one hour of game play. In order to allow levels of collaboration to occur
naturally, no specific instructions were given to the dyads other than to “work together” to
achieve the goals. This allowed the participants to naturally engage in whatever level of
collaboration they chose. Forcing a particular form of collaboration on the dyads could
potentially restrict the variation in collaboration behaviors. Participants filled out a final survey
before concluding the experiment and being debriefed.
Task. Democracy 2 is a game-based political strategy simulation. The game‟s
computational structure is based on the concept of a neural network. The players assume the role
of two governmental officials of a fictional country and collaborate to make decisions such as
increasing or decreasing taxes in order to solve societal problems such as gang violence or
homelessness. The primary goal of the game is to improve the welfare of your nation while also
maintaining enough support to be re-elected at the end of your term. This particular testbed was
chosen because it provides a novel collaborative task that is relatively easy to learn and perform,
making it suitable for a student sample. However, it also simulates the cognitive processes of
29
strategy formulation and decision-making in a politically-oriented context, making it very
applicable for potential research in the arena of strategic military planning and overseas
governmental interactions. In this particular study, the participants were given control of a
fictional country that has numerous issues to address including a large national debt, mob
problems, and a burden on the medical system caused by a contagious disease. The participants
were required to collaboratively address these issues while simultaneously trying to ensure their
re-election at the end of the term.
Measures
Ethnic diversity. Objective ethnic diversity of the dyads was coded as a dichotomous
variable in order to enable comparison across groups: Same-ethnicity = 1, cross-ethnicity = 2.
Ethnicity pairing was quasi-randomly assigned in that participants signed up for timeslots with
no knowledge of the conditions.
Propensity to trust. Propensity to trust will be measured using the generalized trust scale
from the Couch, Adams, & Jones (1996) trust inventory. This scale was designed to assess trust
as a basic personality trait, or one‟s orientation toward people in general. The Cronbach‟s alpha
for this scale was .91. Sample items include “I tend to be accepting of others” and “only a fool
would trust most people.”
Perceived deep-level similarity. Several measures of perceived similarity will be taken
after the participants have met, but before they engage in the experimental task. Because I am
also interested in perceived deep-level similarity, the items assess similarity in terms of values
and beliefs. Several items taken from Ensher & Murphy (1997), which were adapted to apply to
this particular experimental situation. The Cronbach‟s alpha for this scale was .78. Example
items include “How similar are you and your partner in regards to how you see things?” and
30
“How similar are you and your partner in terms of your outlook, perspective and values?” These
items were combined with an adapted version of the deep-level work style similarity scale from
Zellhmer-Bruhn, Maloney, Bhappu, and Salvador (2008). An example item is “my partner and I
share a similar work ethic.” See Appendix J for the full scale.
Trust and distrust. Because no existing validated measure of trust appropriately assesses
initial trust in a partner, it was necessary to create a unique measure for the purposes of this
study. Therefore, items that assess both trust and distrust as based on the theory described by
Lewicki and colleagues (1998) were written and partially validated prior to use (Wildman, Fiore,
Burke, & Salas, 2009). In particular, these items are intended to measure initial levels of trust
and distrust prior to any interaction with the trustee. The Cronbach‟s alpha for these scales were
.92 and .93, respectively. An example item for trust is “I have faith that my partner will perform
their role with our mutual interest in mind” while an example item for distrust is “I fear that my
partner will not perform their role with our mutual interest in mind.” These two items
demonstrate one conceptual difference between the attitudes of trust and distrust – namely, that
trust is characterized by faith while distrust is characterized by fear.
Collaborative behavior. Several of the dimensions from the Marks, Mathieu, and Zaccaro
(2001) team process measure that represent aspects of the collaborative process were combined
to serve as the measure of collaborative behavior. Specifically, because collaboration is defined
as being dynamic and evolving, monitoring progress toward goals and resource monitoring were
included. In other words, as the simulation progressed and the conditions surrounding the
problem changed, successful collaborative dyads should have kept track of their progress and
their resources. Because collaboration is described as a behavioral process of reciprocal
interaction, team monitoring/backup and coordination were included to assess the extent to
31
which the dyads were acting reciprocally and working together to solve the problem. The
interpersonal process of motivating and confidence was also included in order to capture the
“shared” part of collaboration. In other words, I describe collaboration as being aimed at some
shared goal. Therefore, effective collaboration should demonstrate high levels of motivation and
encouragement between the involved parties. The Cronbach‟s alpha for this scale was .95.
Sample items include “To what extent does our team actively work to smoothly integrate our
work efforts?” and “To what extent does our team actively work to assist each other when help is
needed?”
Performance. Performance was measured using several objective indicators of
performance pulled from the Democracy 2 simulation: final popularity score (out of 100 percent)
and final national debt (in dollars). The overall performance score was calculated as a weighted
combination of the final popularity scores and final debt scores. The dollar amount of debt was
converted into a decimal that represented the percentage of the maximum level of debt that was
achieved across all teams. The final popularity score for each dyad was then multiplied by this
decimal value, resulting in higher scores for dyads that achieved higher popularity and low debt,
and lower scores for dyads that achieved low popularity and high debt. This resulted in a
distribution of final performance scores that was normal.
Control variables. In order to control for as much extraneous variance as possible, a
variety of individual difference variables were measured during the online pre-survey.
Specifically, age, gender, prior gaming experience, video game self-efficacy, collective
orientation (Driskell, Salas, & Hughes, 2009), ethnic identification, acculturation (Stephenson,
2000), basic empathy (Jolliffe & Farrington, 2005), social dominance (Pratto, Sidanius,
Stallworth, & Malle, 1994), familiarity with the other participant, and prior cross-ethnic
32
experiences were all measured and examined as potential control variables. See Appendices for
the full scales for all measures. Out of these scales, only age, social dominance, and familiarity
of the other participant were significant covariates and were included in several analyses.
33
CHAPTER FIVE: RESULTS
Data Analysis
SPSS 16.0 for Windows was used to test all study hypotheses. All continuous study
variables were aggregated to the dyad level by taking the average of the members‟ scores. It has
been suggested that this form of aggregation is most appropriate when team members can easily
compensate for one another on task contributions (LePine et al., 1997). Given that in the
Democracy 2 task the participants were sitting side-by-side with access to the same set of
information and therefore had ample opportunity to compensate for one another‟s contributions,
this was chosen as the most appropriate aggregation method.
To test the predicted relationships, several analytical procedures were utilized. First,
correlations were calculated between all measured variables to check that relationships were
significant and in the hypothesized direction. All linear hypothesized relationships between
continuous variables (hypotheses 3a, 3b, 4a, 4b, 6a, and 6b) were tested using simple regression.
Hypothesis 1 was tested using a one-way analysis of covariance (ANCOVA) in order to control
for potential confounds when examining the differences in perceived deep-level similarity across
experimental ethnicity conditions. Adjusted mean scores for the two groups were used to assess
if the findings were in the predicted direction. The interaction term was calculated and used in
regression to test for the moderating effect of propensity to trust on the relationship between
objective ethnic similarity and perceived deep-level similarity in hypothesis 2. Hypotheses 3c
and 4c were tested using chi-square comparison tests. Hierarchical regression was used to
examine the predictive power of distrust on collaboration above and beyond trust in Hypothesis
6c.
34
Bootstrapping techniques as suggested by Preacher & Hayes (2004; 2008) were used to
test for mediation in hypotheses 5a, 5b, 7a, and 7b. Bootstrapping is superior to the Baron and
Kenny (1986) approach for testing mediation for several reasons. First, it does not impose the
assumption of normality of the sampling distribution, which is an assumption that is often
violated in small samples and can lead to issues with power and Type I errors. Bootstrapping
also has a potential to test a single multiple mediation model rather than testing multiple separate
mediation models, increasing the power of the test and allowing for the relative magnitude of
indirect effects to be directly compared. It can also be applied to small samples with more
confidence, and provides confidence intervals regarding the magnitude of indirect effects,
making it a more descriptive method of analysis as well. The results of all analyses using the
aggregated data are presented in the following section.
Hypothesis Results
Pearson product-moment correlation results and descriptive statistics for all study
variables are reported in Table 1. Hypothesis 1 stated that cross-ethnicity dyads would report
lower levels of perceived deep-level similarity than same-ethnicity dyads. Three covariates were
found to have significant correlations with either ethnic diversity or perceived deep-level
similarity: age, familiarity between participants, and prior cross-ethnicity experience. A one-way
analysis of covariance (ANCOVA) was conducted to compare perceived deep-level similarity
across the two experimental ethnicity conditions while controlling for these three variables. The
independent variable, objective ethnic diversity, was manipulated compositionally into two
levels: same and different ethnicity. The dependent variable was a continuous variable of self-
reported perceived similarity, and the covariates were continuous self-report variables. A
preliminary analysis evaluating the homogeneity-of-slopes assumption indicated that age did not
35
significantly interact with objective ethnic diversity, F(1, 99) = .25, MSE = 2.41, p =.62, partial
η2 = .01 and familiarity did not significantly interact with objective ethnic diversity, F(1, 99) =
1.66, MSE = 15.76, p =.20, partial η2 = .02. However, ethnic experience did significantly interact
with the diversity manipulation to predict perceived deep-level similarity, F(1, 101) = .230, MSE
= 2.26, p =.63, and could not be used as a covariate in the analysis. Therefore, familiarity and
age were retained in the final ANCOVA, but ethnic experience was not. The ANCOVA was
significant, F(1, 103) = 14.24, MSE = 141.43, p = .000, partial η2 = .12. The strength of the
relationship between objective ethnic diversity and perceived deep-level similarity was moderate
as assessed by partial η2, with objective ethnic diversity accounting for 12% of the variance in
perceived deep-level similarity, holding constant the level of familiarity between participants and
age.
36
Table 1. Summary of Intercorrelations, Means, and Standard Deviations for Study Variables
Variable 1 2 3 4 5 6 7 8 9 10 11
1. Ethnic Diversity --
2. Propensity to Trust -.080 .905
3. Perceived Similarity .396** .134 .784
4. Trust .130 .225* .638** .920
5. Distrust -.187 -.219* -.408** -.622** .928
6. Collaboration .080 .139 .319** .379** -.281** .954
7. Performance -.113 .110 .020 .159 -.191 .386** --
8. Familiarityc .156 .063 .284** .083 -.003 .083 -.250** --
9. Social Dominancec -.084 .359** .018 -.185 .247* -.045 .024 .117 --
10. Acculturationc .034 .537** -.187 -.105 .201* -.092 -.027 -.088 .391** .912
11. Agec .155 -.002 -.327** -.184 .084 -.101 .084 -.103 -.275** .157 --
M 1.54 69.28 34.76 2.60 21.13 90.42 .393 1.19 35.34 92.36 18.99
SD .50 13.70 3.65 3.86 5.43 10.33 .103 .745 11.29 16.45 1.45
Note. N = 107 dyads. Cronbach‟s alpha reliability coefficient is presented in the diagonal. c=control
* p < .05, two-tailed ** p < .01, two-tailed
37
The mean scores on perceived deep-level similarity adjusted for level of familiarity were
as expected across the two ethnic diversity conditions. Participants in the different-ethnicity
condition reported lower levels of perceived deep-level similarity (M = 33.49) than participants
in the same-ethnicity condition (M = 35.85). It should be noted that the Levene statistic for
homogeneity of variances indicated that the variances of the dependent variable were not equal
among groups, F(1,105) = 6.692, p = .011. However, an independent sample t-test was also
conducted to ensure that this relationship is trustworthy when equal variances are not assumed,
and the t-test were equal variances are not assumed was also significant, t(105), = 4.326, p =
.000. Thus, hypothesis 1 was fully supported.
Hypothesis 2 stated that propensity to trust would moderate the relationship between
ethnic diversity and perceived similarity. In order to test this relationship, the interaction term
between propensity to trust and ethnic diversity was calculated and put into a regression equation
predicting perceived similarity along with the two main effects. The results of this analysis
demonstrated that while the total model accounted for a significant amount of variance in
perceived similarity (Table 2), the interaction between propensity to trust and objective ethnic
diversity did not account for significant variance in perceived similarity, β = .18, t(3, 103) =
.344, p = .732. Therefore, hypothesis 2 was not supported.
38
Table 2. Regression of Perceived Similarity on Propensity to Trust, Ethnic Diversity, and their
Interaction
Predictor B SE B β 95% CI
Propensity to Trust .002 .080 .008 [-.15, .16]
Ethnic Diversity -3.97 3.39 -.550 [-10.68, 2.75]
PT*Ethnic Diversity .020 .050 .190 [-.08, .11]
R2 .14**
F for change in R2 6.962**
Note. N = 107 dyads.
* p < .05, two-tailed ** p < .01, two-tailed
39
Hypotheses 3a and 3b stated that propensity to trust would be positively related to trust
and negatively related to distrust, respectively. Simple linear regression (Table 3) indicated that
propensity to trust was a significant positive predictor of trust, R2 = .05, β = .225, t(1, 105) =
2.371, p = .020. None of the measured control variables were significantly correlated with trust,
so no controls were included in this regression. Social dominance and acculturation were found
to be correlated with distrust, however, and therefore were included in the regression predicting
distrust with propensity to trust in order to increase the power of the test. Acculturation was
found to not be a significant predictor of perceived deep-level similarity when included with
social dominance, however, and was therefore dropped from the final analysis. The final multiple
regression (Table 4) indicated that social dominance was a significant covariate when included
as a predictor, β = .37, t(1, 105) = 3.90, p = .000, and propensity to trust was a significant
negative predictor of distrust, R2 change = .11, β = -.35, t(1, 105) = -3.69, p = .000 when
controlling for the effect of social dominance. Therefore, hypothesis 3a and 3b were both
supported.
Hypothesis 3c stated that propensity to trust would be more strongly related to trust than
to distrust. In order to test if propensity to trust was more strongly related to trust than distrust,
the differences between the correlations was tested using a chi-square test. Pearson correlations
(one-tailed) indicated that propensity to trust was significantly positively related to trust (r =
.225, p = .01) and significantly negatively related to distrust (r = -.219, p = .012). The chi-square
test indicated that the correlations were not significantly different from each other, χ2 = .002, p =
.964. Thus, hypothesis 3c was not supported.
40
Table 3. Regression Analyses Predicting Trust from Propensity to Trust
Variable B SE B β 95% CI
Propensity to Trust .064 .027 .225 [.010, .117]
R2 .051*
F for change in R2 5.623*
N = 107 dyads.
* p < .05, two-tailed
41
Table 4. Hierarchical Regression Analyses Predicting Distrust from Social Dominance and Propensity to Trust
Model 1 Model 2
Variable B SE B β 95% CI B SE B β 95% CI
Social Dominance .119 .045 .247 [.028, .209] .180 .046 .374 [.088, .271]
Propensity to Trust -.140 .038 -.353 [-.215, -.065]
R2 .061* .169**
F for change in R2 6.803* 13.597**
N = 107 dyads.
* p < .05, two-tailed ** p < .01, two-tailed
42
Hypotheses 4a and 4b stated that perceived similarity would be positively related to trust
and negatively related to distrust, respectively. Simple linear regression (Table 5) indicated that
perceived deep-level similarity was a significant positive predictor of trust, R2 = .41, β = .638,
t(1, 105) = 8.5, p = .000. Again, because social dominance is a significant predictor of distrust, it
was included as a covariate. Results (Table 6) indicate that social dominance is a significant
covariate, β = .254, t(1, 105) = 2.96, p = .004, and perceived deep-level similarity was a
significant negative predictor of distrust, R2 change = .17, β = -.41, t(1, 105) = -4.80, p = .000,
when controlling for social dominance. Pearson correlations (one-tailed) also indicated that
perceived deep-level similarity was positively related to trust (r = .638, p = .000) and negatively
related to distrust (r = -.408, p = .000). Therefore, hypotheses 4a and 4b were supported. In
regards to hypothesis 4c, the chi-square test indicated that the absolute value of the correlations
for perceived deep-level similarity and trust and distrust, respectively, were significantly
different, χ2 = 5.377, p = .02, which corresponds with the r-squared values that indicate that
propensity to trust accounts for 41% of the variance in trust and only 17% of the variance in
distrust after accounting for the variance due to social dominance. Therefore, hypothesis 4c was
supported.
43
Table 5. Regression Analyses Predicting Trust from Perceived Deep-Level Similarity
Variable B SE B β 95% CI
Perceived DL Similarity .682 .080 .638 [.523, .841]
R2 .408**
F for change in R2 72.248**
N = 107 dyads.
* p < .05, two-tailed
44
Table 6. Hierarchical Regression Analyses Predicting Distrust From Social Dominance and Perceived Deep-Level Similarity
Model 1 Model 2
Variable B SE B β 95% CI B SE B β 95% CI
Social Dominance .119 .045 .247 [.028, .209] .122 .041 .254 [.040, .204]
Perceived DL Similarity -.617 .128 -.413 [-.871, -.362]
R2 .061* .231**
F for change in R2 6.803* 23.061**
N = 107 dyads. DL = deep-level.
* p < .05, two-tailed ** p < .01, two-tailed
45
Hypothesis 5a stated that perceived deep-level similarity would mediate the relationship
between objective ethnic diversity and trust. In order to test this hypothesis, the bootstrapping
statistical method suggested by MacKinnon, Krull, and Lockwood (2000) and Preacher and
Hayes (2004; 2008) was used (Table 7). More specifically, the SPSS macro for this statistical
procedure created by Preacher and Hayes (2004) was used to run all analyses. All results are
based on 5,000 bootstrap samples. In order to make the results more easily interpretable,
objective ethnic diversity was reverse coded to represent objective ethnic similarity such that
lower scores indicated ethnically-diverse dyads and higher scores indicated ethnically-similar
dyads. Objective ethnic similarity was entered as the independent variable, trust as the dependent
variable, and perceived deep-level similarity as the mediator. Propensity to trust was also
included as a covariate since it is a significant predictor of trust. The partial effect of propensity
to trust on trust was significant, .042, p = .05, and was therefore retained as a covariate in the
analysis. The total effect of objective ethnic similarity on trust was not significant, c = .874,
t(107) = 1.18, p = .24. The direct effect, however, was approaching significance when perceived
deep-level similarity was included as a mediator, c′ = -1.172, t(107) = -1.89, p = .06. The total
indirect effect of objective ethnic similarity on trust through perceived deep-level similarity was
significant, point estimate = 2.05, with a 95% BCa CI of 1.13 to 3.20 (Figure 2).
Several authors have recently argued that a significant total effect of the independent
variable on the dependent variable is not necessary for mediation to occur, as certain patterns of
inconsistent mediation can lead to apparently insignificant total effects (see MacKinnon et al.,
2000; Shrout & Bolger, 2002). More specifically, MacKinnon and colleagues (2000) contend
that when the direct and indirect effects of the independent variable on the dependent variable
have opposite signs, it is indicative of a suppression or inconsistent mediation effect. In other
46
words, the direct and indirect effects of the independent variable can cancel each other out when
combined and cause a misleading non-significant total effect. The finding that the effect of
objective ethnic similarity was not significant when the mediator was included, but then gets
closer to significance when the mediator is included suggests that inconsistent mediation, or
suppression, is occurring (MacKinnon, Krull, & Lockwood, 2000). This interpretation is
furthered supported by the fact that the total indirect effect of objective ethnic similarity on trust
through perceived deep-level similarity was significant and in the opposite direction of the direct
effect. Therefore, this finding suggests that perceived deep-level similarity does partially mediate
the relationship between objective ethnic similarity and trust, but that inconsistent mediation or
suppression is occurring. Thus, hypothesis 5a was partially supported.
47
Table 7. Indirect Effect of Objective Ethnic Similarity on Trust through Perceived Deep-Level Similarity
Bootstrapping
Percentile 95% CI BC 95% CI BCa 95% CI
Point
Estimate
Lower Upper Lower Upper Lower Upper
Perceived DL
Similarity 2.05
1.08 3.10 1.17 3.24 1.13 3.20
Note. N = 107 dyads. DL = deep-level, BC = bias corrected, BCa = bias corrected and accelerated, 5,000 bootstrap samples
48
Figure 2. Mediation Model for Direct and Indirect Effects of Objective Ethnic Similarity on Trust
49
Hypothesis 5b similarly stated that perceived similarity would mediate the relationship
between objective ethnic diversity and distrust (Table 8). Objective ethnic diversity was entered
as the independent variable and again reverse coded to represent ethnic similarity, distrust as the
dependent variable, and perceived deep-level similarity as the mediator. Propensity to trust was
again included as a covariate, as well as social dominance since it is significantly related to
distrust. The total effect of objective ethnic similarity on distrust while accounting for propensity
to trust and social dominance was significant, c = -2.08, t(107) = -2.17, p = .03. The direct effect
became insignificant when the mediator was included, c′ = -.57, t(107) = -.59, p = .55, suggesting
that the negative effect of objective ethnic similarity on distrust was fully mediated through
perceived deep-level similarity. This is further supported by the fact that the total indirect effect
of objective ethnic similarity on distrust through perceived deep-level similarity was significant
(Figure 3), with a point estimate of -1.50 and a 95% BCa CI of -2.81 to -.62. Therefore,
hypothesis 5a was supported.
50
Table 8. Indirect Effect of Objective Ethnic Similarity on Distrust through Perceived Deep-Level Similarity
Bootstrapping
Percentile 95% CI BC 95% CI BCa 95% CI
Point
Estimate
Lower Upper Lower Upper Lower Upper
Perceived DL
Similarity -1.50
-2.83 -.45 -3.08 -.53 -2.81 -.62
Note. N = 107 dyads. BC = bias corrected, BCa = bias corrected and accelerated, 5,000 bootstrap samples
51
Figure 3. Mediation Model for Direct and Indirect Effects of Objective Ethnic Similarity on Distrust
52
Hypotheses 6a and 6b stated that trust would be positively related to collaboration, and
distrust would be negatively related to collaboration, respectively. Hypothesis 6c further stated
that distrust would predict unique variance in collaboration above and beyond the variance
explained by trust. To test these hypotheses, multiple regression was conducted to predict
collaboration from trust and distrust (Table 9). Collinearity statistics were checked to ensure that
the correlation between trust and distrust was not violating any assumption. The tolerance
statistic, .613, and VIF, 1.632, indicated that there were no problems with collinearity. The
results of the first model indicate that trust accounts for a significant amount of variability in
collaboration, R2
= .14, F(1, 105) = 17.65, p = .000. The second model evaluated whether or not
distrust predicted above and beyond trust. Results indicate that distrust did not account for
significant variance in collaboration beyond trust, R2 change = .003, partial r = .06, F(1, 104) =
.41, p =.526,. Therefore, hypothesis 6c was not supported.
53
Table 9. Hierarchical Regression Analyses Predicting Collaboration from Trust and Distrust
Model 1 Model 2
Variable B SE B β 95% CI B SE B β 95% CI
Trust 1.01 .24 .38 [.53, 1.48] .89 .31 .33 [.28, 1.50]
Distrust -.14 .22 -.07 [-.64, .53]
R2 .14** .15*
F for change in R2 17.65** .41*
N = 107 dyads.
* p < .05, two-tailed ** p < .01, two-tailed
54
Hypothesis 7a and 7b stated that trust and distrust would mediate the relationship
between perceived similarity and collaboration. Again, the bootstrapping method suggested by
Preacher and Hayes (2004; 2008) was used. Collaboration was entered as the dependent variable,
perceived deep-level similarity as the independent variable, and trust and distrust were entered
simultaneously as mediators in order to test it as a multiple mediator model (Table 10). The total
effect of perceived deep-level similarity on collaboration was significant, c = .91, t(107) = 3.45,
p = .001, indicating that the independent variable is related to the dependent variable. The direct
effect was insignificant when the combined mediators were included, c′ = .36, t(107) = 1.09, p =
.28 while the indirect effect through the combined proposed mediators was significant, point
estimate = .54, with a 95% BCa CI of .16 to .98. The individual indirect effects through trust,
point estimate = .46, p = .07, 95% BCa CI = .01 to .94, and distrust, point estimate = .08, p = .14,
95% BCa CI = -.16 to .39, were not significant, indicating that neither construct was a significant
mediator when their unique variance was considered alone, but that when shared variance
between them was considered, they did mediate the relationship as indicated by the significant
total indirect effect. While this means that hypotheses 7a and 7b were not supported individually,
the findings do indicate that trust and distrust fully mediate the relationship between perceived
deep-level similarity and collaboration when considered together (Figure 4).
55
Table 10. Mediation of the Effect of Perceived Deep-Level Similarity on Collaboration through Trust and Distrust
Products of
Coefficients
Bootstrapping
Percentile 95% CI BC 95% CI BCa 95% CI
Point
Estimate SE Z
Lower Upper Lower Upper Lower Upper
Indirect Effects
Trust .46 .25 1.83 -.01 .93 -.01 .96 .01 .94
Distrust .08 .13 .62 -.22 .35 -.19 .37 -.16 .39
TOTAL .54 .22 2.46 .11 .92 .15 .97 .16 .98
Contrasts
Trust vs. distrust .38 .34 1.11 -.26 1.07 -.25 1.09 -.29 1.02
Note. N = 107 dyads. BC = bias corrected, BCa = bias corrected and accelerated, 5,000 bootstrap samples
56
Figure 4. Multiple Mediation Model for Direct and Indirect Effects of Perceived Deep-Level Similarity on Collaboration
57
Finally, hypothesis 8 stated that collaboration would be positively related to overall
performance on the decision-making simulation. Familiarity was included as a covariate since it
is significantly correlated with performance. Multiple regression (Table 11) indicated that
familiarity is a significant covariate, β = .01, t(1, 103) = -3.27, p = .001, and collaboration does
account for a significant amount of the variance in performance, R2
change = .17, β = .41, t(1,
103) = 4.71, p = .000, when accounting for level of familiarity between participants. Therefore,
hypothesis 8 stating that collaboration is related to higher performance on the simulation was
supported.
58
Table 11. Hierarchical Regression Analyses Predicting Performance from Familiarity and Collaboration
Model 1 Model 2
Variable B SE B β 95% CI B SE B β 95% CI
Familiarity -.035 .013 -.250 [-.061, -.009] -.039 .012 -.284 [-.063, -.016]
Collaboration .004 .001 .409 [.002, .006]
R2 .063* .229**
F for change in R2 6.947* 22.190**
N = 107 dyads.
* p < .05, two-tailed ** p < .01, two-tailed
59
CHAPTER SIX: DISCUSSION
The current laboratory study provided insight on several relationships regarding ethnic
diversity, perceived similarity, trust, distrust, and collaboration. First, I found that mixed
ethnicity dyads reported lower perceived deep-level similarity than same-ethnicity dyads. This
finding supports the notion from relational demography theory (Tsui et al., 2002) that similarity
in outwardly observable traits such as ethnicity leads to assumptions regarding similarity in
deep-level traits such as beliefs, values, and personality. The two conditions, because they were
quasi-randomly assigned, did not have significant differences in any of the potential individual
difference control variables I measured, and gender had no significant impact on perceived
similarity. Therefore, it seems likely that the differences in the manipulated variable of ethnic
diversity are what led to differences in perceived deep-level similarity. This finding suggests that
individuals, even when performing together for a very short amount of time, are aware of
outwardly observable differences in ethnicity, and that these differences translate into
assumptions of differences in values and work styles.
Second, propensity to trust was found to be a positive predictor of trust and a negative
predictor of distrust, suggesting that in this particular context, an individual‟s general tendency to
trust others does directly influence the formation of their trust and distrust attitudes. Propensity
to trust was not more strongly related to trust than to distrust as hypothesized. In retrospect, the
lack of support for hypothesis 3c was not surprising due to the fact that the measure of
propensity to trust used included several reverse-coded items that were qualitatively more
reflective of distrust attitudes than trust attitudes. In other words, the measure was actually
tapping into propensities to both trust and distrust, and was actually simultaneously triggering
positive activation and negative activation, making it equally related to both trust and distrust.
60
Contradictorily to the above finding, it was found that perceived deep-level similarity
was predictive of both trust and distrust, but was significantly more predictive of trust than
distrust. More specifically, perceived deep-level similarity accounted for more than double the
amount of variance in trust than it did for distrust. This finding supports Thoresen and
colleagues‟ (2003) belief that positively-valenced constructs are more predictive of other
positively-valenced constructs than of negatively-valenced constructs. It further suggests that
trust and distrust are separate constructs with varying relationships with their predictors given the
differential strength of the relationships between perceived deep-level similarity and trust and
distrust, respectively. This particular measure did not include any reverse coded items that could
have potentially made the construct both positively and negatively valenced, which complements
the suggestion that the previous non-finding could be due to the mixed nature of the propensity
to trust measure.
Bootstrapping methods demonstrated that perceived similarity did mediate the
relationship between objective ethnic diversity and trust and distrust, respectively. However, the
pattern of mediation for trust and distrust were quite different. Interestingly, the total relationship
between objective ethnic diversity and trust was non-significant, which appears to have occurred
because the direct and indirect effects are in opposite directions, resulting in a null total effect.
As described by MacKinnon and colleagues (2000), this pattern of results suggests that
inconsistent mediation is occurring. In other words, the direct and indirect effects of objective
ethnic diversity on trust have contradicting directions. In this data, it appears that indirect effect
is in the hypothesized direction, with higher ethnic similarity leading to higher perceived deep-
level similarity and subsequently higher trust. However, the direct effect is surprisingly in the
opposite direction – higher ethnic similarity actual leads to lower levels of trust when considered
61
directly. It is possible that this relationship is an artifact of social desirability. Individuals may be
attempting to appear more socially desirable by inflating their reports of trust when they are in
mixed ethnicity condition in order to avoid appearing racist. Regardless, the significant indirect
effect of ethnic diversity on trust via perceived deep-level similarity combined with the findings
from hypothesis one do imply overall that individuals perceive themselves to more similar on
deep-level characteristics to ethnically similar others, and that this perceived deep-level
similarity results in increased levels of trust.
The pattern of relationships between objective ethnic diversity, perceived deep-level
similarity, and distrust looked quite different from those with trust. While the total relationship
between objective ethnic similarity and trust was non-significant and the mediation analysis
suggested inconsistent mediation, the total relationship between objective ethnic similarity and
distrust was significant. Furthermore, the direct effect of objective ethnic similarity on distrust
became insignificant when the mediator, perceived deep-level similarity, was included. This
pattern of results suggests that traditional full mediation is occurring, and in the hypothesized
direction. The fact that objective ethnic diversity had very different indirect impacts on trust and
distrust, and that these impacts are mediationally translated in different ways, does support the
notion that trust and distrust are related, yet separate, attitudes that must be captured individually
if scientists are to truly understand how trust and distrust attitudes are developed.
This study also found that trust was a significant predictor of collaborative behavior, but
distrust did not predict unique variance beyond that of trust in this situation. This finding could
be interpreted as suggesting that distrust does not account for enough unique variance to warrant
being examined as a separate construct. In other words, in this particular study, trust and distrust
shared so much variance that distrust did not contribute any unique predictive power. However,
62
this finding should be interpreted with caution as it could potentially be an artifact of the task
type. The task was not very high on interpersonal risk because the two participants were easily
able to monitor one another‟s action and compensate for one another‟s weaknesses. This likely
made distrust an obsolete attitude in this setting. In other words, because there was no risk
inherent in the task, there was no real need for participants to distrust one another of for distrust
to have a negative impact on collaboration. Therefore, I posit that the results of this study,
overall, suggest that trust and distrust are highly related yet conceptually distinct constructs given
their differential relationships with their predictors despite the finding that distrust did not
provide unique predictive power above trust.
The multiple mediation bootstrap analysis looking at the indirect effects of perceived
deep-level similarity on collaboration revealed several interesting patterns. First, it was found
that neither trust nor distrust significantly mediated the relationship individually, but that the two
variables together did fully mediate the relationship between perceived deep-level similarity and
collaboration. This is likely due to the large amount of shared variance between trust and distrust
mentioned previously. In other words, neither construct contained enough unique variance in this
setting to act as significant mediators alone, but when the shared variance was included, trust and
distrust combined did fully account for the relationship between perceived deep-level similarity
and collaboration. This finding suggests that trust-related attitudes as a whole are the explanatory
mechanism for why people that perceive themselves to be similar to one another act more
collaboratively.
Finally, collaborative behavior did predict overall performance on the Democracy 2
simulation after controlling for the impact of familiarity. This suggests that engaging in
63
behaviors such as coordination, backup behavior, and confidence and motivation building does
positively correlate with more effective decision-making.
Theoretical Implications
The findings of this study suggest several things regarding future theoretical work. First,
the finding that objective ethnic similarity causes individuals to perceive similarities in terms of
deep-level values, styles, and beliefs suggests that is it critical to measure both objective and
perceived similarity if we are to truly understand the influence of cultural diversity on
collaboration. It also suggests that it is important to keep objective and perceived similarity
conceptually and empirically distinct. In other words, is it not just actual differences in ethnicity
or beliefs that influences attitude formation and behavior, but it is also the perception of
similarity that is critical to the formation of impressions. Second, the finding of this study that
propensity to trust is only one of several predictors of trust and distrust in short-term, ad hoc
settings supports the notions set forth by other researchers (e.g., Hung et al., 2004) that when
individuals have very little information about others, they will use salient surface-level
characteristics such as ethnicity to form assumptions and attitudes. This finding is important to
theory because it suggests that appearances do matter, and that while individuals may not be
cognitive of these processes, they are indeed forming opinions about others based on a
combination of predisposition, surface-level traits, and prior knowledge associated with those
traits.
Furthermore, the combined findings of this study suggest that future research should
conceptualize and measure trust and distrust separately in order to provide the most predictive
results. While our results were somewhat mixed regarding the distinction between trust and
distrust in terms of differences in predictors and ability to predict, the bulk of the findings
64
demonstrate that trust and distrust have different magnitudes of relationships with predictors and
function differently as mediators. It appears that trust is better predicted by perceived similarity
than distrust, while distrust was found to be significantly correlated with social dominance while
trust was not. Both of these findings are consistent with the positive and negative activation
theory which states that constructs that are matched in terms of emotional valence will be more
strongly related than constructs that are mismatched. Therefore, future research should definitely
focus on more closely examining the distinctions between these two attitudinal constructs in
terms of antecedents and consequences.
Practical Implications
Overall, the findings of this study suggest that problems with trust may arise in
multicultural situations in which the involved parties are different from each other in terms of
ethnicity. The findings regarding propensity to trust suggest that selecting team members with
higher propensity to trust may result in teams with higher levels of initial trust, and that this trust
may lead to more collaborative behavior and more effective decision-making. While this may or
may not be advantageous depending on the context in which the team is operating, it does
provide a deeper understand of how initial trust is formed and what predictors are related to
initial trust. Additionally, the findings indicate that propensity to trust only explains one portion
of the variance in trust, and therefore that there are other variables feeding into the formation of
trust attitudes.
Second, this study suggests that individuals in multicultural situations may make
assumptions regarding deep-level similarity that translate into lower levels of initial trust and
higher levels of initial distrust, which could hinder collaborative behavior between the involved
parties. However, it is important to note that it is not actual ethnic diversity that is related to trust
65
and collaboration in multicultural contexts, but it is perceived deep-level similarity between the
involved parties. When perceived deep-level similarity is accounted for, there is actually a
negative relationship between objective ethnic diversity and trust and no relationship between
objective ethnic diversity and distrust. This suggests that the negative impact of objective ethnic
diversity in multicultural situations can actually be completely mitigated if deep-level similarities
are emphasized between the involved parties and attention away from differences. Second, the
finding that trust and distrust combined fully mediate the relationship between perceived
similarity and collaboration suggests that collaborating parties that perceive each other to be
dissimilar will have deficits in trust and problems with distrust, and moreover, that this lack of
trust will negatively influence their behavior toward one another. In other words, for a team to
engage in effective collaboration (e.g., coordination, motivation, backup behavior), they should
perceive themselves to be similar and consequently trust one another. It would also imply that
teams and team leaders in the field should focus on managing both trust and distrust and the
corresponding related behaviors, which require further research to be identified.
Study Limitations and Future Research
One limitation of the current study is the use of a student sample. Undergraduate
populations, due to the tendency for all individuals to be highly acculturated, are not the best
representation of cultural or ethnic heterogeneity. However, this limitation only strengthens my
findings since it should theoretically reduce variance in terms of ethnic diversity, which would
reduce the power of my analyses. Therefore, my findings are actually conservative based on this
assumption and the effect size of ethnic diversity on perceived deep-level similarity may be even
larger in non-student samples with higher levels of ethnic heterogeneity. Future research should
66
replicate this study in non-student samples in order to see if the relationships hold, become
stronger, or change pattern.
A second limitation of this study was the nature of the chosen testbed. The decision-
making task, Democracy 2, was a strong example of a collaborative, complex decision-making
task. However, due to the nature of the physical location of the participants, it did not have any
distributed information, and therefore there was very little risk involved since either of the
participants could instantly double check the information being given by the other. Therefore,
this particular task was a very weak test of the differential influence of trust and distrust since
there really was no impetus for trust, or distrust, to be important. In other words, individuals
could not be worried about their partner betraying them or making a mistake if they can instantly
see the effects of their partner‟s actions. However, again, this only means my findings for trust
were conservative – trust was a significant predictor in this study despite the fact that the task
was not ideal for priming the need for trust. However, this limitation suggests that my lack of
findings regarding distrust may be an artifact of the task. In other words, I might be making a
type II error regarding distrust, and a more risk-based task may be necessary to truly see the
predictive ability of distrust as a construct. Future research should focus on examining trust and
distrust within high-risk tasks and in situations where levels of trust and distrust can be directly
manipulated.
A third limitation of this study is the relatively small sample size. For the majority of the
analyses conducted, the sample size was acceptable. However, the sample size was relatively
small for testing a moderation hypothesis, and therefore that finding may be a Type II error
caused by a lack of power due to small sample size. Therefore while hypothesis 2 was not
supported in this empirical investigation, the implications of this finding should be examined
67
with caution. Future research should attempt to test this moderating hypothesis with a larger
sample size.
Additionally, the majority of the variables in this study were self-report measures. In
other words, perceived similarity, trust, distrust, and collaboration were all collected via surveys.
It is possible the mono-method bias is a problem in this study. However, a variety of individual
difference variables were collected and examined as potential control variables to reduce the
possibility of making Type I or Type II errors. Additionally, the primary independent variable
was experimentally manipulated and our distal outcome variable was an objective performance
score. Therefore, the relationship including these variables should not be affected by mono-
method bias. Furthermore, perceived deep-level similarity, trust, and distrust are all
psychological mechanisms that can only be captured accurately via self-report.
Collaboration is the only variable measured via self-report that would have been more
accurately measured using a behavioral method. In order to reduce the chances that our
relationships were not in the correct order, we did measure trust before the task and collaboration
after the task to create some level of temporal separation. This should have also reduced the
influence of mono-method bias since the measured were filled out at separate times with an hour
of task performance in between to serve as a distraction. However, future research should use
more objective behaviorally-based measures, such as communication or behavioral coding, to
examine collaboration as a reciprocal problem-solving process.
Finally, due to the artificial nature of the laboratory, there was no true consequence of
bad performance in this study. The participants were engaging in the task simply to gain extra
credit for completing research, and therefore did not have any compelling reason to be motivated
toward performing well. However, this limitation again only indicates that the findings are
68
conservative in that trust still predicted collaboration and collaboration still predicted
performance even when the participants had no external motivation to perform in the first place.
This suggests that the findings from this study will likely only become stronger when tested in a
situation with real consequences for performance.
Conclusion
The current study represents a first step toward addressing the pressing need to
understanding the processes and influences of intercultural collaboration. Specifically, it
examined the influence of ethnic diversity on perceived deep-level similarity, trust, distrust,
collaboration, and performance in a short-term, complex decision-making context. The findings
of the study have several important implications for theory and practice. First, ethnic diversity
results in reduced levels of trust and higher levels of distrust via perceptions of deep-level
similarity. Therefore, the findings suggest that it is critical to measure both objective and
perceived similarity in research if we are to truly understand the influence of cultural diversity on
collaboration. Practically, this also suggests that one potential avenue for fostering trust in
multicultural situations is to encouraging involved parties to uncover deep-level similarities and
de-emphasize assumptions regarding dissimilarities. Finally, this study also suggests that trust-
related attitudes as a whole are the explanatory mechanism for why individuals that perceive
themselves to be similar to one another act more collaboratively. In other words, improving trust
in multicultural contexts should lead to more collaborative behavior.
This study contributes to the trust and collaboration literature in several ways. First, it is
the first empirical study to examine collaboration based on a new multi-disciplinary, integrative
definition (Bedwell et al., under review). Second, it is one of the first laboratory-based
experiments to explore the unique predictive impact of trust and distrust as separate attitudinal
69
constructs in a collaboration context. Overall, this study represents one of the first attempts to
empirically examine the influence of ethnic diversity on trust and the effectiveness of
collaboration in an attempt to shed light on the phenomena of intercultural collaboration. The
hope is that this study will serve as a foundation for a continuing stream of research examining
the mechanisms through which culture influences collaborative behavior and performance.
70
APPENDIX A: DEMOGRAPHIC ITEMS
71
Please answer the questions about yourself and your parents/guardians to the best of your
knowledge. If you do not know the answer to the question or the question does not apply to you,
please write “N/A” to indicate it is not applicable.
1. What is your sex?
Male
Female
2. What is your age?
___________
3. What is your race or ethnic background? (check all that apply):
White/Caucasian
Black/African American
Hispanic or Latino
Asian
Pacific Islander or Native Hawaiian
American Indian
Alaskan Native
Middle Eastern
Other: Please Describe___________________
4. If you chose more than one race or ethnic group in the previous question, which one do
you most identify with?
White/Caucasian
Black/African American
Hispanic or Latino
Asian
Pacific Islander or Native Hawaiian
American Indian
Alaskan Native
Middle Eastern
Other: Please Describe_____________________
5. What is your Mother‟s race or ethnicity?
White/Caucasian
Black/African American
Hispanic or Latino
Asian
Pacific Islander or Native Hawaiian
American Indian
Alaskan Native
Middle Eastern
Other: Please Describe
6. What is your father‟s race or ethnicity?
White/Caucasian
Black/African American
Hispanic or Latino
Asian
Pacific Islander or Native Hawaiian
72
American Indian
Alaskan Native
Middle Eastern
Other: Please Describe______________
7. Where were you born? (City, State; Country if outside the US)
__________________________
8. Is there a country other than the country in which you were born that you identify most
with?
____________________________
9. Where was your mother born? (City, State; Country if outside the US)
____________________________
10. Where was your father born? (City, State; Country if outside the US)
____________________________
11. Are you fluent in more than one language? If so, which languages, in order of most fluent
to least fluent?
______________________________________________________________
12. What language does your mother speak? If she speaks more than one language, list the
languages in order of most fluent to least fluent.
______________________________________________________________
13. What language does your father speak? If he speaks more than one language, list the
languages in order of most fluent to least fluent.
______________________________________________________________
14. Marital Status:
Single
Married
Separated
Divorced
Widowed
Living with Another
Domestic Partnership
15. Class:
Freshman
Sophomore
Junior
Senior
If Senior – please indicate your year (i.e. 4th
year, 5th
year, etc.) ______________
16. How many credit hours are you enrolled in this semester? _________________
17. Major: _______________________
18. Minor: _______________________
19. Do you have any other degrees?
Yes
No
If Yes, please list them here: __________________________________
20. What is your employment status?
Not Employed
Self-Employed
73
Student
Employed Full-Time
Employed Part-Time
21. UCF GPA: ___________
22. SAT Score: ___________
Verbal:___________
Math: ___________
23. ACT Score: ___________
24. Are you the first one in your immediate family to attend college? (Yes/No)
25. What is the highest education level of your mother?
High School
Some College
2-year College Degree
4-year College Degree
Some Graduate School
Master's Degree
Doctorate (including a Juris Doctorate – law degree)
26. What is the highest education level of your father?
High School
Some College
2-year College Degree
4-year College Degree
Some Graduate School
Master's Degree
Doctorate (including a JD)
27. How long have you been using the Internet (in years)? __________
28. How many hours per day do you spend online? ___________
29. Do you predominantly use a Mac or a PC? ____________
30. Have you ever had a head injury with loss of consciousness over 10 minutes? (Yes/No)
31. Do you currently have any limitations, pain, or injuries/disabilities to your dominant hand
or arm? (Yes/No)
If so, please describe: __________________________________
32. Have you ever had a seizure? (Yes/No)
33. Do you have any other diagnosed neurological disorders? (Yes/No)
If so, please describe: __________________________________
34. Do you currently take any prescribed medications? (Yes/No)
If so, please list them here: __________________________________
35. Have you had more than 4 drinks in one sitting over the past 24 hours? (Yes/No)
36. Have you taken any illicit drugs or prescriptions not directly prescribed to you in the last
48 hours? (Yes/No)
74
APPENDIX B: PRIOR VIDEO GAME SCALE
75
Please answer the following questions using the following scale:
1 = Not at all
2 = About once a year
3 = About once a month
4 = About once a week
5 = Everyday
1. The following questions will assess how often you play different types of videogames:
2. Any videogames (e.g., PC-based, Nintendo, Playstation, Wii, arcade)?
3. First-person-perspective videogames, for example: Battlefield 1942, Halo?
4. Simulation-based videogames, for example: Falcon, Microsoft Flight Simulator, Lock On: Modern
Air?
5. Online multi-player videogames, for example: EverQuest, World of Warcraft?
6. Action videogames, for example: Grand Theft Auto, NBA, God of War?
7. Command/strategy videogames, for example: Risk, Command and Conquer?
8. Creative development videogames, for example: Sims, Tycoon, Civilization?
9. Puzzle videogames, for example: Minesweeper, Tetris?
76
APPENDIX C: PROPENSITY TO TRUST SCALE
77
Please answer the following questions using the following scale:
1 = Strongly Disagree
2 = Somewhat Disagree
3 = Neither Agree nor Disagree
4 = Somewhat Agree
5 = Strongly Agree
1. I tend to be accepting of others.
2. My relationships with others are characterized by trust and acceptance.
3. Basically I am a trusting person.
4. It is better to trust people until they prove otherwise than to be suspicious of others until they prove
otherwise.
5. I accept others at “face value.”
6. Most people are trustworthy.
7. It is better to be suspicious of people you have just met, until you know them better.
8. I make friends easily.
9. Only a fool would trust most people.
10. I find it better to accept others for what they say and what they appear to be.
11. I would admit to being more than a little paranoid about people I meet.
12. I have few difficulties trusting people.
13. Basically, I tend to be distrustful of others.
14. Experience has taught me to be doubtful of others until I know they can be trusted.
15. I have a lot of faith in the people I know.
16. Even during the “bad times,” I tend to think that things will work out in the end.
17. I tend to take others at their word
18. When it comes to people I know, I am believing and accepting.
19. I feel I can depend on most people I know.
20. I almost always believe what people tell me.
78
APPENDIX D: SOCIAL DOMINANCE ORIENTATION SCALE
79
To what extent do you have a positive or negative feeling towards the following objects or
statements?
1 = Very positive
2 = Positive
3 = Slightly positive
4 = Neither positive nor negative
5 = Slightly negative
6 = Negative
7 = Very negative
1. Some groups of people are simply not the equals of others.
2. Some people are just more worthy than others.
3. This country would be better off if we cared less about how equal all people were.
4. Some people are just more deserving than others.
5. It is not a problem if some people have more of a chance in life than others.
6. Some people are just inferior to others.
7. To get ahead in life, it is sometimes necessary to step on others.
8. Increased economic equality.
9. Increased social equality.
10. Equality.
11. If people were treated more equally we would have fewer problems in this country.
12. In an ideal world, all nations would be equal.
13. We should try to treat one another as equals as much as possible. (All humans should be
treated equally.)
14. It is important that we treat other countries as equals.
80
APPENDIX E: MULTIGROUP ACCULTURATION SCALE
81
Below are a number of statements that evaluate changes that occur when people interact with others of
different cultures or ethnic groups. For questions that refer to “COUNTRY OF ORIGIN” or “NATIVE
COUNTRY,” please refer to the country from which your family originally came. If your family is from
the United States, your “COUNTRY OF ORIGIN” would be the United States. For questions referring to
“NATIVE LANGUAGE,” please refer to the language spoken where your family originally came.
Scale 1 = Completely False
2
3
4 = Completely True
5 = N/A
Items 1. I understand English, but I‟m not fluent in English.
2. I am informed about current affairs in the United States.
3. I speak my native language with my friends and acquaintances from my country of origin.
4. I have never learned to speak the language of my native country.
5. I feel totally comfortable with (Anglo or White) American people.
6. I eat traditional foods from my native culture.
7. I have many (Anglo/ White) American acquaintances.
8. I feel comfortable speaking my native language.
9. I am informed about current affairs in my native country.
10. I know how to read and write in my native language.
11. I feel at home in the United States.
12. I attend social functions with people from my native country.
13. I feel accepted by (Anglo / White) Americans.
14. I speak my native language at home.
15. I regularly read magazines of my own ethnic group.
16. I know how to speak my native language.
17. I know how to prepare (Anglo / White) American foods.
18. I am familiar with the history of my native country.
19. I regularly read an American newspaper.
20. I like to listen to music of my ethnic group.
21. I like to speak my native language.
22. I feel comfortable speaking English.
23. I speak English at home.
24. I speak my native language with my spouse or partner.
25. When I pray, I use my native language.
26. I attend social functions with (Anglo / White) American people.
27. I think in my native language.
28. I stay in close contact with family members and relatives in my native country.
29. I am familiar with important people in American history.
30. I think in English.
31. I speak English with my spouse or partner.
32. I like to eat American foods.
82
APPENDIX F: COLLECTIVE ORIENTATION SCALE
83
Working as part of a team can have positive as well as negative aspects. We are interested in
how you feel about working in team settings. Below are a number of statements regarding
teams. There are no right or wrong answers; however you may agree more or less strongly with
each statement.
Please answer the following questions using the following scale:
1 = Strongly Disagree
2 = Somewhat Disagree
3 = Neither Agree nor Disagree
4 = Somewhat Agree
5 = Strongly Agree
1. When solving a problem, it is very important to make your own decision and stick by it.
2. When I disagree with other team members, I tend to go with my own gut feelings.
3. I find working on team projects to be very satisfying.
4. I would rather take action on my own than to wait around for others' input.
5. I find that it is often more productive to work on my own than with others.
6. I find it easy to negotiate with others who hold a different viewpoint than I hold.
7. When I have a different opinion than another group member, I usually try to stick with my
own opinion.
8. I think it is usually better to take the bull by the horns and do something yourself, rather than
wait to get input from others.
9. For most tasks, I would rather work alone than as part of a group.
10. I always ask for information from others before making any important decision.
11. I can usually perform better when I work on my own.
12. It is important to stick to your own decisions, even when others around you are trying to get
you to change.
13. Teams usually work very effectively.
14. I prefer to complete a task from beginning to end with no assistance from others.
15. When others disagree, it is important to hold one's ground and not give in.
84
APPENDIX G: BASIC EMPATHY SCALE
85
Please answer the following questions using the following scale:
1 = Strongly Disagree
2 = Somewhat Disagree
3 = Neither Agree nor Disagree
4 = Somewhat Agree
5 = Strongly Agree
1. My friend‟s emotions don‟t affect me much.
2. After being with a friend who is sad about something, I usually feel sad.
3. I can understand my friend‟s happiness when she/he does well at something.
4. I get frightened when I watch characters in a good scary movie.
5. I get caught up in other people‟s feelings easily.
6. I find it hard to know when my friends are frightened.
7. I don‟t become sad when I see other people crying.
8. Other people‟s feelings don‟t bother me at all.
9. When someone is feeling „down‟ I can usually understand how they feel.
10. I can usually figure out when my friends are scared.
11. I often become sad when watching sad things on TV or in films.
12. I can often understand how people are feeling even before they tell me.
13. Seeing a person who has been angered has no effect on my feelings.
14. I can usually figure out when people are cheerful.
15. I tend to feel scared when I am with friends who are afraid.
16. I can usually realize quickly when a friend is angry.
17. I often get swept up in my friend‟s feelings.
18. My friend‟s unhappiness doesn‟t make me feel anything.
19. I am not usually aware of my friend‟s feelings
20. I have trouble figuring out when my friends are happy.
86
APPENDIX H: FAMILIARITY SCALE
87
Please answer the following questions using the following scale:
1 = Not at all (You‟ve never met them before) 6 =Very well (you are good friends)
1. How well do you know your partner?
88
APPENDIX I: ETHNIC EXPERIENCE SCALE
89
Please answer the following questions using the following scale: 1 = None
2 = A little
3 = Some
4 = Quite a bit
5 = A lot
1. How much experience have you had interacting with people from other ethnic groups?
90
APPENDIX J: PERCEIVED DEEP-LEVEL SIMILARITY SCALE
91
Please answer the following questions using the following scale: 1 = Very Dissimilar
2 = Somewhat Dissimilar
3 = Slightly Dissimilar
4 = Slightly Similar
5 = Somewhat Similar
6 = Very Similar
1. How similar are you and your partner in regards to how you understand things?
2. How similar are you and your partner in terms of your values?
3. How similar are you and your partner in terms of how you think about problems?
4. How similar are you and your partner in terms of coming up with a solution to problems?
Please answer the following questions using the following scale:
1 = Strongly Disagree
2 = Somewhat Disagree
3 = Neither Agree nor Disagree
4 = Somewhat Agree
5 = Strongly Agree
1. My partner and I share similar work ethics.
2. My partner and I have similar work habits.
3. My partner and I have similar communication styles.
4. My partner and I have similar interaction styles.
5. My partner and I have similar personalities.
6. My partner and I come from similar cultural backgrounds.
7. My partner and I are from the same country.
8. My partner and I share similar ethnic backgrounds.
92
APPENDIX K: PERCEIVED DEEP-LEVEL SIMILARITY SCALE
93
Please answer the following questions using the following scale:
1 = Not at all 6 = Very much so
To what extent do you feel:
1. Assured that your partner will make intelligent decisions?
2. Convinced your partner will do what is expected without being asked?
3. Confident in your partner's ability to complete the task?
4. Faith that your partner can do the task at hand?
5. Positive that your partner will try and do what is best for you both?
6. Convinced that you can rely on your partner to try their hardest?
7. Certain that your partner will act in your best interest?
8. Confident that your partner will do as he/she says?
9. A lack of faith in your partner‟s intentions?
10. Confident that your partner will try to do things that benefit the team?
11. Compelled to keep tabs on your partner to be sure things get done?
12. Doubtful that your partner is able to handle important responsibilities?
13. Afraid that your partner will make a mistake?
14. Compelled to keep a record of your partner‟s work?
15. Worried that your partner will do something wrong?
16. Afraid that your partner will purposefully do something that isn‟t helpful?
17. Confident that your partner will do something selfish?
18. Afraid your partner will not do what is best for the team?
19. Suspicious about your partner‟s reasons behind certain decisions?
20. Worried that your partner will sabotage you?
21. Nervous that your partner will betray you?
22. Cautious about your partner‟s intentions?
94
APPENDIX L: COLLABORATIVE BEHAVIOR SCALE
95
To what extent does our team actively work to…
1= Not at all
2= Very Little
3= To Some Extent
4= To a Great Extent
5= To a Very Great Extent
Monitoring Progress Toward Goals
1 Regularly monitor how well we are meeting our team goals?
2. Use clearly defined metrics to assess our progress?
3. Seek timely feedback from stakeholders (e.g., customers, top management, other
organizational units) about how well we are meeting our goals?
4. Know whether we are on pace for meeting our goals?
5. Let team members know when we have accomplished our goals?
Resource and Systems Monitoring
1. Monitor and manage our resources (e.g., financial, equipment, etc.)?
2. Monitor important aspects of our work environment (e.g., inventories, equipment and process
operations, information flows)?
3. Monitor events and conditions outside the team that influence our operations?
4. Ensure the team has access to the right information to perform well?
5. Manage our personnel resources?
Team Monitoring and Backup
1. Develop standards for acceptable team member performance?
2. Balance the workload among our team members?
3. Assist each other when help is needed?
4. Inform team members if their work does not meet standards?
5. Seek to understand each other‟s strengths and weaknesses?
Coordination
1. Communicate well with each other?
2. Smoothly integrate our work efforts?
3. Coordinate our activities with one another?
4. Re-establish coordination when things go wrong?
5. Have work products ready when others need them?
Conflict Management
1. Deal with personal conflicts in fair and equitable ways?
2. Show respect for one another?
3. Maintain group harmony?
4. Work hard to minimize dysfunctional conflict among members?
5. Encourage healthy debate and exchange of ideas?
96
Motivating & Confidence Building
1. Take pride in our accomplishments?
2. Develop confidence in our team‟s ability to perform well?
3. Encourage each other to perform our very best?
4. Stay motivated, even when things are difficult?
5. Reward performance achievement among team members?
97
APPENDIX M: UCF IRB HUMAN SUBJECTS PERMISSION LETTER
98
99
REFERENCES
Allen, T. D., Day, R., & Lentz, E. (2005). The role of interpersonal comfort in mentoring
relationships. Journal of Career Development, 31(3), 155-169.
Aubert, B. A. & Kelsey, B. L. (2003). Further understanding of trust and performance in virtual
teams. Small Group Research, 34, 576-618.
Ajzen, I., & Fishbein, M. (1980). Understanding attitudes and predicting social behavior.
Englewood Cliffs, NJ: Prentice-Hall.
Baron, R. M., & Kenny, D. A. (1986). The moderator-mediator variable distinction in social
psychological research: Conceptual, strategic and statistical considerations. Journal of
Personality and Social Psychology, 51, 1173-1182.
Bedwell, W. L., Wildman, J. L., DiazGranados, D., Salazar, M., Kramer, W. S., & Salas, E.
(under review). Collaboration at work: An integrative multilevel conceptualization.
Human Resource Management Research.
Bhattacharya, R., Devinney, T. M., & Pillutla, M. M. (1998). A formal model of trust based on
outcomes. Academy of Management Review, 23(3), 459-472.
Brewer, M. B. (1979). In-group bias in the minimal intergroup situation: A cognitive-
motivational analysis. Psychological Bulletin, 86, 307-324.
Brewer, M. B. (1988). A dual process model of impression formation. In T. K. Srull & R. S.
Wyer, Jr. (Eds.), Advances in social cognition (Vol. 1, pp. 1-36). Hillsdale, NJ: Lawrence
Erlbaum.
Brewer, M. B., & Kramer, R. M. (1985). The psychology of intergroup attitudes and behavior.
Annual Review of Psychology, 36, 219-243.
100
Brower, H. H., Schoorman, F. D., & Tan, H. H. (2007). A model of relational leadership: The
integration of trust and leader-member exchange. Leadership Quarterly, 11, 227-250.
Burke, C. S., Sims, D. E., Lazzara, E. H., & Salas, E. (2007). Trust in leadership: A multi-level
review and integration. Leadership Quarterly, 18, 606-632.
Byrne, D. (1971). The Attraction Paradigm. New York: Academic.
Chao, G. T., & Moon, H. (2005). The cultural mosaic: A metatheory for understanding the
complexity of culture. Journal of Applied Psychology, 90, 1128-1140.
Colquitt, J. A., Scott, B. A., & LePine, J. A. (2007). Trust, trustworthiness, and trust propensity:
A meta-analytic test of their unique relationships with risk taking and job performance.
Journal of Applied Psychology, 92(4), 909-927.
Costa, A. C. (2003). Work team trust and effectiveness. Personnel Review, 32(5), 605-622.
Couch, L., Adams, J., & Jones, W. (1996). The assessment of trust orientation. Journal of
Personality Assessment, 67, 305-323.
Dirks, K. T., & Ferrin, D. L. (2002). Trust in leadership: Meta-analytic findings and implications
for research and practice. Journal of Applied Psychology, 87(4), 611-628.
Driskell, J. E., Salas, E., & Hughes, S. (2009). Collective orientation in teams: Development of
an individual difference measure. Unpublished Manuscript. Florida Maxima Corporation,
University of Central Florida, and Naval Air Warfare Center Training Systems Division.
Ensher, E. A., & Murphy, S. E. (1997). Effects of race, gender, perceived similarity, and contact
on mentor relationships. Journal of Vocational Behavior, 50(3), 460-481.
Gelfand, M. J., Erez, M., Aycan, Z. (2007). Cross-cultural organizational behavior. Annual
Review of Psychology, 58, 479-514.
101
Fiske, S. T. (1993). Social cognition and social perception. Annual Review of Psychology, 44,
155-194.
Fiske, S. T., & Neuberg, S. L. (1990). A continuum of impression formation, from category-
based to individuating processes: Influences of information and motivation on attention
and interpretation. In M. P. Zanna (Ed.), Advances in experimental social psychology
(Vol. 23, pp. 1-74). San Diego, CA: Academic Press.
Gate strives to build trust with Pakistan military. (January 23, 2010). Daily Times. Retreived
from http://www.dailytimes.com.pk/default.asp?page=2010\01\23\story_23-1-
2010_pg1_4
Gill, H., Boies, K., Finegan, J. E., & McNally, J. (2005). Antecedents of trust: Establishing a
boundary condition for the relation between propensity to trust and intention to trust.
Journal of Business and Psychology, 19(3), 287-302.
Henneman, E. A., Lee, J. L., & Cohen, J. I. (1995). Collaboration: A concept analysis. Journal of
Advanced Nursing, 21(1), 103-109.
Hung, Y. C., Dennis, A. R., & Robert, L. (2004). Trust in virtual teams: Towards an integrative
model of trust formation. Proceedings of the 37th Hawaii International Conference on
System Sciences.
Jolliffe, D., & Farrington, D. P. (2005). Development and validation of the Basic Empathy Scale.
Journal of Adolescence, 29, 589-611.
Kanawattanachi, P., & Yoo, Y. (2002). Dynamic nature of trust in virtual teams. Journal of
Strategic Information Systems, 11, 187-213.
Kelly, M. J., Schaan, J., & Joncas, H. (2002). Managing alliance relationships: Key challenges in
the early stages of collaboration. R& D Management, 32(1), 11-22.
102
Kramer, R. M. (1994). The sinister attribution error: Paranoid cognition and collective distrust in
organizations. Motivation and emotion, 18, 199-230.
Kramer, R. M. (1999). Trust and distrust in organizations: Emerging perspectives, enduring
questions. Annual Review of Psychology, 50, 569-598.
Kramer, R. M., & Brewer, M. B. (1984). Effects of group identity on resource use in a simulated
commons dilemma. Journal of Personality & Social Psychology, 46(5), 1044-1057.
Kramer, R. M., & Messick, D. M. (1998). Getting by with a little help from our enemies:
Collective paranoia and its role in intergroup relations. In C. Sedikides, J. Schopler, & C.
A. Insko (Eds.), Intergroup Cognition and Intergroup Behavior (pp. 233-255). Mahwah,
NJ: Lawrence Erlbaum.
Lankau, M. J., Riordan, C. M., & Thomas, C. H. (2005). The effects of similarity and liking in
formal relationships between mentors and protégés. Journal of Vocational Behavior,
67(2), 252-265.
Lau D. C., & Liden, R. C. (2008). Antecedents of coworker trust: Leaders‟ blessings. Journal of
Applied Psychology, 5, 1130-1138.
Leinonen, P., Jarvela, S., & Hakkinen, P. (2005). Conceptualizing the awareness of
collaboration: A qualitative study of a global virtual team. Computer Supported
Cooperative Work, 14, 301-322.
LePine, J. A., Hollenbeck, J. R., Ilgen, D. R., & Hedlund, J. (1997). Effects of individual
differences on the performance of hierarchical decision-making teams: Much more than
g. Journal of Applied Psychology, 82, 803–811.
103
LePine, J. A., Piccolo, R. F., Jackson, C. L., Mathieu, J. E., & Saul, J. R. (2008). A meta-analysis
of teamwork processes: Tests of a multidimensional model and relationships with team
effectiveness criteria. Personnel Psychology, 61(2), 273-307.
Lewicki, R. J., McAllister, D. J., & Bies, R. J. (1998). Trust and distrust: New relationships and
realities. Academy of Management Review, 23(3), 438-458.
MacKinnon, D. P., Krull, J. L., & Lockwood, C. M. (2000). Equivalence of the mediation,
confounding and suppression effect. Prevention Science, 1(4), 173-181.
Marks, M. A., Mathieu, J. E., & Zaccaro, S. J. (2001). A temporally based framework and
taxonomy of team processes. Academy of Management Review, 26(3), 356-376.
Mayer, R. C., Davis, J. H., & Schoorman, F. D. (1995). An integrative model of organizational
trust. The Academy of Management Review, 20(3), 709-734.
McCulloch, K. C., Ferguson, M. J., Kawada, C. C. K., & Bargh, J. A. (2008). Taking a closer
look: On the operation of nonconscious impression formation. Journal of Experimental
Social Psychology, 44(3), 614-623.
McLaughlin, C., & Ponte, P. (1997). The emotional aspects of cross-cultural collaboration:
Assumptions and challenges‟. Journal of In-Service Education, 23(1), 101-111.
Mesquita, L. F. (2007). Starting over when the bickering never ends: Rebuilding aggregate trust
among clustered firms through trust facilitators Academy of Management Review, 32(1),
72-91.
Milliken, F., & Martins, L. (1996). Searching for common threads: Understanding the multiple
effects of diversity in organizational groups. Academy of Management Review, 21(2),
402-433.
104
Oswald, M. E., & Grosjean, S. (2004). Confirmation bias. In R. F. Pohl (Ed.), Cognitive
illusions: A handbook on fallacies and biases in thinking, judgement and memory (pp.
79-96). Hove, UK: Psychology Press.
Preacher, K. J., & Hayes, A. F. (2004). SPSS and SAS procedures for estimating indirect effects
in simple mediation models. Behavior Research Methods, Instruments, &
Computers, 36(4), 717-731.
Preacher, K. J., & Hayes, A. F. (2008). Asymptotic and resampling strategies for assessing and
comparing indirect effects in multiple mediator models. Behavior Research
Methods, 40(3), 879-891.
Pratto, F., J. Sidanius, L. M. Stallworth, and B. F. Malle. 1994. Social dominance orientation: A
personality variable predicting social and political attitudes. Journal of Personality and
Social Psychology, 67, 741–763.
Rempel, J. K., Ross, M., & Holmes, J. G. (2001). Trust and communicated attributions in close
relationships. Journal of Personality and Social Psychology, 81, 57-64.
Riordan, C. M., & Wayne, J. H. (2008). A review and examination of demographic similarity
measures used to assess relational demography within groups. Organizational Research
Methods, 11, 562-592.
Riordan, C. M., & Weatherly, E. W. (1999). Defining and measuring employee‟s identification
with their work groups. Educational and Psychological Measurement, 59, 310-324.
Rosenhan, D. L. (1973, January). On being sane in insane places. Science (New York,
N.Y.) 179 (70): 250–8.
Rotter, J. B. (1954). Social learning and clinical psychology. Englewood Cliffs, NJ: Prentice-
Hall.
105
Rotter, J. B. (1967). A new scale for measurement of interpersonal trust. Journal of Personality,
35, 651−665.
Rousseau, D. M., Sitkin, S. B., Burt, R. S., & Camerer, C. (1998). Not so different after all: a
cross-discipline view of trust. Academy of Management Review, 23, 393−404.
Salas, E., Sims, D. E & Burke, C. S. (2005). Is there “big five” in teamwork?. Small Group
Research, 36(5), 555-599.
Serva, M. A., Fuller, M. A., & Mayer, R. C. (2005). The reciprocal nature of trust: A
longitudinal study of interacting teams. Journal of Organizational Behavior, 26, 625-648.
Shrout, P. E., & Bolger, N. (2002). Mediation in experimental and nonexperimental studies: New
procedures and recommendations. Psychological Methods, 7(4), 422-445.
Snyder, M. & Swann, W. B. (1978). Hypothesis-testing processes in social interaction. Journal
of Personality and Social Psychology, 36, 1202-1212.
Stallings, M. C., Dunham, C. C., Gatz, M. & Bengtson, V. L. (1997). Relationships among life
events and psychological well-being: More evidence for a two-factor theory of well-
being. Journal of Applied Gerontology, 16, 104-119.
Stephenson, M. (2000). Development and validation of the Stephenson Multigroup Acculturation
Scale (SMAS).Psychological Assessment, 12(1), 77-88.
Tajfel, H. (1970). Experiments in intergroup discrimination. Scientific American, 223, 96-102.
Tajfel, H. (1982). Social identity and intergroup relations. Cambridge, England: Cambridge
University Press.
Thoresen, C.J., Kaplan, S.A., Barsky, A.P., Warren, C.R., de Chermont, K. (2003). The affective
underpinnings of job perceptions and attitudes: A meta-analytic review and integration.
Psychological Bulletin, 129, 914-945.
106
Tsui, A. S., & O‟Reilly, C. A., III. (1989). Beyond simple demographic effects: The importance
of relational demography in superior-subordinate dyads. Academy of Management
Journal, 32, 402-423.
Tsui, A. S., Porter, L. W., & Egan, T. D. (2002). When both similarities and dissimilarities
matter: Extending the concepter of relationship demography. Human Relations, 55, 899-
929.
Tsui, A. S., Xin, K. R., & Egan, T. D. (1995). Relational demography: The missing link in
vertical dyad linkage. In S. E. Jackson & M. N. Ruderman (Eds.), Diversity in work
teams: Research paradigms for a changing work place (pp. 97-129). Washington, DC:
American Psychological Association.
Tsui, A., Porter, L., & Egan, T. (2002). When both similarities and dissimilarities matter:
Extending the concept of relational demography. Human Relations, 55(8), 899-929.
Wayne, S. J., & Liden, R. C. (1995). Effects of impression management on performance ratings:
A longitudinal study. Academy of Management Journal, 38, 232-260.
Weber, J. M., Malhotra, D., & Murnighan, J. K. (2001). An attributional impetus model of trust
development. Paper presented at the Academy of Management.
Wildman, J. L., Fiore, S. M., Burke, C. S., & Salas. E. (2009). Development of trust and distrust
measures. Unpublished Manuscript. Department of Psychology, University of Central
Florida, Orlando, FL.
Wildman, J. L., Shuffler, M., Lazzara, E. H., Fiore, S., Burke, C. S., Salas, E., & Garven, S.
(under review). Trust development in swift starting action teams: A theoretical
framework and propositions. Group & Organization Management.
107
Williams, M. (2001). In whom we trust: Group membership as an affective context for trust
development. The Academy of Management Review, 26(3), 377-396.
Williams, M. (2007). Building genuine trust through interpersonal emotion management: A
threat regulation model of trust and collaboration across boundaries. Academy of
Management Review, 32(2), 595-621.
Zellmer-Bruhn, M. E., Maloney, M. M., Bhappu, A. D., & Salvador, R. (2008). When and how
do differences matter? An exploration of perceived similarity in teams. Organizational
Behavior and Human Decision Processes, 107, 41-59.